Phenotypic age and dna methylation based biomarkers for life expectancy and morbidity

ABSTRACT

Identifying reliable biomarkers of aging is a major goal in geroscience. While the first generation of epigenetic biomarkers of aging were developed using chronological age as a surrogate for biological age, we hypothesized that composite clinical measures of “phenotypic age”, may facilitate the development of a more powerful epigenetic biomarker of aging. Here we show that our newly developed epigenetic biomarker of aging “DNAm PhenoAge” strongly outperforms previous measure in regards to predictions for a variety of aging outcomes, including all-cause mortality, cancers, physical functioning, and, age-related dementia. It is also associated with Down syndrome, HIV infection, socioeconomic status, and various life style factors such as diet, exercise, and smoking. Overall, this single epigenetic biomarker of aging is able to capture risks for an array of diverse outcomes across multiple tissues and cells, and in moving forward, will facilitate the development of anti-aging interventions.

CROSS-REFERENCE TO RELATED APPLICATIONS

This application claims priority under Section 119(e) from U.S. Provisional Application Ser. No. 62/618,422, filed Jan. 17, 2018, entitled “PHENOTYPIC AGE AND DNA METHYLATION BASED BIOMARKERS FOR LIFE EXPECTANCY AND MORBIDITY” the contents of each which are incorporated herein by reference.

STATEMENT OF GOVERNMENT INTEREST

This invention was made with Government support under Grant Numbers AG051425 and AG052604, awarded by the National Institutes of Health. The Government has certain rights in the invention.

SEQUENCE LISTING

The instant application contains a Sequence Listing which has been submitted electronically in ASCII format and is hereby incorporated by reference in its entirety. Said ASCII copy, created on Jan. 14, 2019, is named 30435_0341WOU1_SL.txt and is 201,768 bytes in size.

TECHNICAL FIELD

The invention relates to methods and materials for examining biological aging in individuals.

BACKGROUND OF THE INVENTION

One of the major goals of geroscience research is to define ‘biomarkers of aging’^(1,2), which are individual-level measures of aging that can account for differences in the timing of disease onset, functional decline, and death over the life course. While chronological age is arguably the strongest risk factor for aging-related death and disease, it is important to distinguish chronological time from biological aging. Individuals of the same chronological age may exhibit greatly different susceptibilities to age-related diseases and death, which is likely reflective of differences in their underlying biological aging processes. Such biomarkers of aging will be crucial to enable instantaneous evaluation of interventions aimed at slowing the aging process, by providing a measurable outcome other than incidence of death and/or disease, which require extremely long follow-up observation.

One potential biomarker that has gained significant interest in recent years is DNA methylation (DNAm), given that chronological time has been shown to elicit predictable hypo- and hyper-methylation changes at many regions across the genome ³⁻⁷. As a result, the first generation of DNAm based biomarkers of aging were developed to predict chronological age⁸⁻¹⁰. The blood-based algorithm by Hannum⁹ and the multi-tissue algorithm by Horvath¹⁰ produced age estimates (DNAm age) that correlate with chronological age well above r=0.90 for full age range samples. Nevertheless, while the current epigenetic age estimators exhibit statistically significant associations with many age-related diseases and conditions¹¹⁻¹⁷, the effect sizes are typically small to moderate. Further, using chronological age as the reference, by definition, may exclude CpGs whose methylation patterns don't display strong time-dependent changes, but instead signal the departure of biological age from chronological age.

Previous work by us and others have shown that “phenotypic aging measures”, derived from clinical biomarkers¹⁸⁻²², strongly predict differences in the risk of all-cause mortality, cause-specific mortality, physical functioning, cognitive performance measures, and facial aging among same-aged individuals. What's more, in representative population data, some of these measures have been shown to be better indicators of remaining life expectancy than chronological age¹⁸, suggesting that they are approximating individual-level differences in biological aging rates.

Accordingly, there is a need for improved methods of observing phenotypic aging, which is predictive of an earlier age of death (all-cause mortality) that is independent of chronological age and traditional risk factors of mortality.

SUMMARY OF THE INVENTION

This invention provides methods and materials useful to examine one or more clinical variables and DNA methylation biomarkers. As discussed in detail below, typically these biomarkers are based on variables that lend themselves to predicting life expectancy and risk for age-related diseases. For example, a first biomarker, referred to as “phenotypic age estimator”, is based on clinical variables such as measurements of factors such as Albumin, Creatinine, Glucose, C-reactive Protein, Lymphocyte Percentage, Mean Cell Volume, Red Blood Cell Distribution Width, Alkaline Phosphatase, White Blood Cell Count, and age at the time of assessment. A second biomarker, referred to as “DNA methylation PhenoAge”, is based on DNA methylation measurements at 513 locations across the human DNA molecule. As discussed below, by examining such biomarkers in an individual, it is possible to obtain information that is highly predictive of multiple morbidity and mortality outcomes in that individual.

The idea of using DNA methylation (DNAm) to estimate biological age has recently gained interest following the discovery that many CpGs throughout the genome display hyper- or hypo-methylation patterns as a function of chronological age. While most of the first-generation epigenetic biomarkers of aging capitalized on these age associations to identify CpGs from which to build composite scores, we hypothesized that a more powerful epigenetic biomarker of aging could be generated from DNA methylation data by replacing chronological age with a surrogate measure of “phenotypic aging” that, in and of itself, differentiates morbidity and mortality risk among same-age individuals. Using multiple large epidemiological studies, we demonstrate that our new epigenetic biomarker that is examines the above-noted combination of factors, DNAm PhenoAge, is highly predictive of multiple morbidity and mortality outcomes—including, but not limited to: life expectancy, heart disease, cancer, and age related dementia. Further, it produces reliable age estimates and risk predictions when measured in various tissues. This shows that our single DNAm based biomarker (DNAm PhenoAge) is capable of capturing risk for an array of diverse diseases and conditions across multiple tissues and cells. As such, DNAm PhenoAge will be useful for assessing personalized risk, improving our understanding of the biological aging process and, evaluating promising interventions aimed at slowing aging and preventing disease.

The invention disclosed herein has a number of embodiments. Embodiments of the invention include method of obtaining information on a phenotypic age of an individual, the method comprising observing methylation of genomic DNA obtained from the individual, wherein methylation is observed in at least 10 CpG methylation markers in polynucleotides having SEQ ID NO: 1-SEQ ID NO: 513 so that information on the phenotypic age of the individual is obtained. Typically in these methods, observing methylation of genomic DNA comprises hybridizing genomic DNA from the individual to a methylation array comprising the polynucleotides having sequences of SEQ ID NO: 1-SEQ ID NO: 513 coupled to a matrix; and/or comprises performing a bisulfite conversion process on the genomic DNA so that cytosine residues in the genomic DNA are transformed to uracil, while 5-methylcytosine residues in the genomic DNA are not transformed to uracil. In such embodiments, the method can comprise observing a clinical variable in the individual comprising at least one of: concentrations of albumin in the individual, concentrations of creatine in the individual, concentrations of glucose in the individual, concentrations of c-reactive protein in the individual, concentrations of alkaline phosphatase in the individual lymphocyte percentage in the individual, mean cell volume in the individual, red blood cell distribution width in the individual, white blood cell count in the individual, and age of the individual at the time of assessment. In certain embodiments of the invention, at least 3, 4, 5, 6, 7 or 8 clinical variables are observed.

Embodiments of the invention can include additional steps such as comparing the chronological age of the individual at the time of assessment and the phenotypic age so as to obtain information on life expectancy of the individual. Embodiments of the invention include using information on the phenotypic age obtained by the method to predict an age at which the individual may suffer from one or more age related diseases or conditions. Embodiments of the invention include those that compare the CG locus methylation profile observed in the individual to the CG locus methylation profile of genomic DNA having SEQ ID NO: 1-SEQ ID NO: 513 present in white blood cells or epithelial cells derived from a group of individuals of known ages; and then correlating the CG locus methylation observed in the individual with the CG locus methylation and known ages in the group of individuals. In typical embodiments of the invention, methylation is observed by a process comprising hybridizing genomic DNA obtained from the individual with at least 100, 200, 300, 400 or 500 polynucleotides comprising SEQ ID NO: 1-SEQ ID NO: 513 disposed in an array. In embodiments of the invention, the phenotypic age of the individual can be estimated using a weighted average of methylation markers within the set of 513 methylation markers. Optionally, methylation marker data is further analyzed, for example by a regression analysis. Optionally in these methods, methylation is observed in genomic DNA obtained from leukocytes or epithelial cells obtained from the individual.

A specific embodiment of the invention is a method of observing a phenotypic age of an individual, the method comprising observing methylation of genomic DNA obtained from the individual, wherein methylation is observed in 513 CpG methylation markers in polynucleotides having SEQ ID NO: 1-SEQ ID NO: 513; and the method comprises hybridizing genomic DNA from the individual to a methylation array comprising the polynucleotides of SEQ ID NO: 1-SEQ ID NO: 513 coupled to a matrix, so that the phenotypic age of the individual is observed.

In certain embodiments of the invention, methods include observing a clinical variable in the individual comprising at least one of: concentrations of albumin in the individual, concentrations of creatine in the individual, concentrations of glucose in the individual, concentrations of c-reactive protein in the individual, concentrations of alkaline phosphatase in the individual lymphocyte percentage in the individual, mean cell volume in the individual, red blood cell distribution width in the individual, white blood cell count in the individual, and age of the individual at the time of assessment. In some embodiments of the invention, the method further comprising observing at least one factor selected from individual diet history, individual smoking history and individual exercise history. Optionally, the observed phenotypic age is then used to assess a risk of a cancer mortality in the individual (e.g. to asses a risk of breast cancer, lung cancer or the like, or to assess a risk of dementia or diabetes mortality in the individual).

A related embodiment of the invention is a tangible computer-readable medium comprising computer-readable code that, when executed by a computer, causes the computer to perform operations including: receiving information corresponding to methylation levels of a set of methylation markers in a biological sample, wherein the set of methylation markers comprises 513 methylation markers that are identified in Table 5; determining an epigenetic age by applying a statistical prediction algorithm to methylation data obtained from the set of methylation markers; and then determining an epigenetic age using a weighted average of the methylation levels of the 513 methylation markers. Optionally in this embodiment, the tangible computer-readable medium comprising computer-readable code, when executed by a computer, further causes the computer to perform operations including: receiving information corresponding to methylation levels of a set of clinical variables in a biological sample, information that is then used for determining an epigenetic age.

Both phenotypic age, and in particular DNAm PhenoAge, are useful biomarkers for human anti-aging studies given that these are highly robust, blood based biomarkers that capture organismal age and the functional state of many organ systems and tissues, thus allowing efficacy of interventions to be evaluated based on real-time measures of aging, rather than relying on long-term outcomes, such as morbidity and mortality. Finally, this measure may be another component of the personalized medicine paradigm, as it allows for evaluation of risk based on an individual's personalized DNAm profile.

Other objects, features and advantages of the present invention will become apparent to those skilled in the art from the following detailed description. It is to be understood, however, that the detailed description and specific examples, while indicating some embodiments of the present invention, are given by way of illustration and not limitation. Many changes and modifications within the scope of the present invention may be made without departing from the spirit thereof, and the invention includes all such modifications.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1. Roadmap for developing DNAm PhenoAge. The roadmap depicts our analytical procedures. In step 1, we developed an estimate of ‘Phenotypic Age’ based on clinical measure. Phenotypic age was developed using the NHANES III as training data, in which we employed a proportional hazard penalized regression model to narrow 42 biomarkers to 9 biomarkers and chronological age. This measure was then validated in NHANES IV and shown to be a strong predictor of both morbidity and mortality risk. In step 2, we developed an epigenetic biomarker of phenotypic age, which we call DNAm PhenoAge, by regressing phenotypic age (from step 1) on blood DNA methylation data, using the InCHIANTI data. This produced an estimate of DNAm PhenoAge based on 513 CpGs. In step 3, we validated our new epigenetic biomarker of aging, DNAm PhenoAge, using multiple cohorts, aging-related outcomes, and tissues/cells. We also performed heritability and functional enrichment analysis.

FIG. 2. Mortality Prediction by DNAm PhenoAge. FIG. 2A: Using four samples from large epidemiological cohorts-two samples from the Women's health Initiative, the Framingham Heart Study, and the Normative Aging Study-we tested whether DNAm PhenoAge was predictive of all-cause mortality. The figure displays a forest plot for fixed-effect meta-analysis, based on Cox proportional hazard models, and adjusting for chronological age. Results suggest that DNAm PhenoAge is predictive of mortality in all samples, and that overall, a one year increase in DNAm PhenoAge is associated with a 4.2% increase in the risk of death (p=1.1E-36). This is in contrast to the first generation of epigenetic aging biomarkers by Hannum and Horvath, for which the Hannum measure predicts mortality, but to a much lesser degree, and the Horvath measure is not significantly associated with mortality. FIG. 2B & C: Using the WHI sample 1, we plotted Kaplan-Meier survival estimates using actual data from WHI sample 1 for the fastest versus the slowest agers (2B), and we used equation from the proportional hazard model to predict remaining life expectancy and plotted predicted survival assuming a chronological age of 50 and a DNAm PhenoAge of either 40 (slow ager), 50 (average ager), or 60 (fast ager) (2C). Median life expectancy was higher for slower agers, such that it was predicted to be approximately 81 years for the fastest agers, 83.5 years for average agers, and 86 years for the slowest agers.

FIG. 3. Chronological age prediction of DNAm PhenoAge in a variety of tissues and cells. Although DNAm PhenoAge was developed using methylation data from whole blood, FIG. 3 suggests that it also tracks chronological age in a wide variety of tissues and cells. For instance, the correlation across all tissues/cells we examined is r=0.71. C\Overall, correlations range from r=0.35 (breast) to r=0.92 (temporal cortex in brain).

FIG. 4. DNAm PhenoAge measured in dorsolateral prefrontal cortex relates to Alzheimer's disease and related neuropathologies. Using postmortem data from the Religious Order Study (ROS) and the Memory and Aging Project (MAP), we find a moderate/high correlation between chronological age and DNAm PhenoAge (FIG. 4A), that is further increased after adjusting for the estimated proportion on neurons in each sample (panel C). We also find that DNAm PhenoAge is significantly higher (p=0.00046) among those with Alzheimer's disease versus controls (panel D), and that it positively correlates with amyloid load (p=0.012, panel E), neuritic plaques (p=0.0032, panel F), diffuse plaques (p=0.036, panel G), and neurofibrillary tangles (p=0.0073, panel H).

FIG. 5. Association between phenotypic age and morbidity. Using NHANES IV as validation data, we tested whether phenotypic age, adjusting for chronological age, was associated with morbidity. Results showed strong dose-effects, such that those with high phenotypic ages tended to have more coexisting morbidities (A) and greater physical functioning problems (B) compared to phenotypically younger persons of the same chronological age.

FIG. 6. Longitudinal comparisons of phenotypic age and DNAm PhenoAge. The top two panels show the distributions of the change in phenotypic age (A) and DNAm PhenoAge (B) over nine years of follow-up in InCHIANTI. The second row depicts the age-adjusted correlations between the two time-points for phenotypic age (C) and DNAm PhenoAge (D). Both variables showed moderate/high correlations, suggesting that, above and beyond the expected increase with chronological time, they remain stable-those who are fast agers, remain fast agers. Finally, panel E shows the correlation between change in phenotypic age and change in DNAm PhenoAge, suggesting that those who experience an acceleration of phenotypic age based on clinical markers also experience age acceleration on an epigenetic level.

FIG. 7. Associations between smoking and DNAm PhenoAge. When comparing DNAm PhenoAge by smoking status, we find that current smokers have significantly high epigenetic ages (A). This is also true when comparing DNAm PhenoAge as a function of pack-years (B). However, no associations with pack-years are found when stratifying by smoking status-former versus current (C & D).

FIG. 8. Fixed effect meta-analysis of the effect of DNAm PhenoAge on the hazard of all cause mortality, stratifying by smoking. In smoking stratified analyses, adjusting for pack-years (in smokers) and chronological age, we find that DNAm PhenoAge significantly predicts mortality even within groups, and despite much smaller sample sizes. The Hannum measure also relates to mortality in both smokers and non-smokers; although to a lesser degree than DNAm PhenoAge.

FIG. 9. Effect of ethnicity on DNAm PhenoAge in the WHI. When comparing DNAm PhenoAge by race/ethnicity, we find that non-Hispanic blacks have the highest ages, whereas non-Hispanic whites have the lowest (A). Despite the fact that DNAm PhenoAge was trained in a mostly non-Hispanic white population, the differences by race/chronological age and ethnicity do not appear to be a reflection of the reliability of the measure within the various strata, given that it shows very consistent age trends across all three groups (B, C, & D).

FIG. 10. Associations with measures of age acceleration in the WHI. FIG. 10A: Correlations (bicor, biweight midcorrelation) between select variables and the three measures of epigenetic age acceleration are colored according to their magnitude with positive correlations in red, negative correlations in blue, and statistical significance (p-values) in green. Blood biomarkers were measured from fasting plasma collected at baseline. Food groups and nutrients are inclusive, including all types and all preparation methods, e.g. folic acid includes synthetic and natural, dairy includes cheese and all types of milk, etc. Variables are adjusted for ethnicity and dataset (BA23 or AS315). FIG. 10B: Multivariate linear regression analysis was also used to examine the associations, adjusting for covariates. Again we find that minority race/ethnicity, lower education, higher BMI, higher CRP, smoking and having metabolic syndrome is associated with higher DNAm PhenoAge. Red meat consumption is also associated positively associated with DNAm PhenoAge in model 2; however the association becomes marginal after adjusting for biomarkers, which may suggest that various biomarkers mediate the association between red meat consumption and DNAm PhenoAge.

FIG. 11. Age adjusted blood cell counts versus phenotypic age acceleration in the Women's Health Initiative (BA23 data). DNAm PhenoAge acceleration (x-axis) versus age adjusted estimates of various measures of abundance of blood cell counts. (A) plasma blasts (activated B cells), (B) percentage of exhausted CD8+ T cells (defined as CD8+CD28-CD45RA−), (C) naïve CD8+ T cell count, (D) naïve CD4+ T cell count, E) proportion of CD+8 T cells, F) proportion of CD4+ helper T cells, G) proportion of natural killer cells, H) proportion of B cells, I) proportion of monocytes, J) proportion of granulocytes (mainly neutrophils). The correlation coefficient and p-value results from the Pearson correlation test. Two software tools were used to estimate the blood cell counts using DNA methylation data. First, Houseman's estimation method 6, which is based on DNA methylation signatures from purified leukocyte samples, was used to estimate the proportions of CDS+ T cells, CD4+T, natural killer, B cells, and granulocytes. Granulocytes are also known as polymorphonuclear leukocytes. Second, the advanced analysis option of the epigenetic clock software 7,s was used to estimate the percentage of exhausted CD8 T cells (defined as CD28-CD45RA−) and the number (count) of naïve CD8+ T cells (defined as (CD45RA+CCR7+). Points are colored by race/ethnicity (blue=Hispanic, green=African Ancestry, grey=non-Hispanic white).

FIG. 12. Fixed effects meta analysis of the effect of DNAm phenotypic age acceleration on the hazard of death after adjusting for blood cell counts. The Cox regression model adjusted for chronological age, race/ethnicity, smoking pack years, and imputed blood cell counts (exhausted CD8+ T cells, naïve CD8+ T cells, CD4T cells, natural killer cells monocytes, granulocytes). The meta analysis p value is colored in red. A significant heterogeneity p value (red font) indicates that the hazard ratios differ significantly across studies.

FIG. 13. Properties of the 513 CpGs that underly DNAmPhenoAge. In our functional enrichment analysis of the chromosomal locations of the 513 CpGs, we distinguished CpGs with positive age correlation from CpGs with negative age correlation. CpGs with positive age correlation exhibited a lower variance but a similar mean methylation level compared to CpGs with negative age correlation (B,C). The 149 CpGs whose age correlation exceeded 0.2 tended to be located in CpG islands (E) and were significantly enriched with polycomb group protein targets (p=8.7E-5, D). A) Each CpGs was correlated with chronological age in whole blood. The histogram shows the correlation coefficients. To carry out a functional annotation analysis, we split the 513 CpGs into 3 groups according to the thresholds visualized as vertical red lines. Group 1 is comprised of 126 CpGs with a negative age correlation(<−0.2). Group 3 is comprised of 149 CpG with a positive age correlation(>0.2). Group 2 is comprised of 238 whose age correlation lies between −0.2 and +0.2. B) Variance of the DNA methylation levels versus the 3 groups. Note that CpGs with positive age correlation (i.e. CpGs in group 3) exhibit the lowest variance. C) Mean methylation levels in blood versus group status. D) Proportion of polycomb group protein targets (y-axis) versus membership in group 3, i.e. the set of clock CpGs that exhibit an age correlation >0.2. To avoid biasing the analysis, the comparison group was comprised of all CpGs that are located on the Illumina 27k array. E) Proportion of CpGs that are located in a CpG island (y-axis) versus membership in group 3. F) Proportion of CpGs that are located in a CpG island (y-axis) versus membership in group 2.

FIG. 14. Partial likelihood versus log(lambda) parameter for elastic net proportional hazard model. Ten-fold cross-validation was employed to select the parameter value, lambda, for the penalized regression. In order to develop a sparse phenotypic age estimator (the fewest biomarker variables needed to produce robust results) we selected a lambda of 0.0192, which represented a one standard deviation increase over the lambda with minimum mean-squared error during cross-validation. Of the forty-two biomarkers included in the penalized Cox regression model, this resulted in ten variables (including chronological age) that were selected for the phenotypic age predictor.

FIG. 15. Partial likelihood versus log(lambda) parameter for elastic net regression. The CpGs used in the elastic net represent those that are found on the Illumina Infinium 450k chip, the EPIC chip, and the Illumina Infinium 27k chip. Lambda was selected using 10-fold cross-validation; however, given that sparseness was not a goal with this model, the lambda with the minimum mean-squared error was selected (lambda=0.35). This lambda, produced a model in which phenotypic age is predicted by DNAm levels at 513 CpGs.

DETAILED DESCRIPTION OF THE INVENTION

In the description of embodiments, reference may be made to the accompanying figures which form a part hereof, and in which is shown by way of illustration a specific embodiment in which the invention may be practiced. It is to be understood that other embodiments may be utilized and structural changes may be made without departing from the scope of the present invention. Many of the techniques and procedures described or referenced herein are well understood and commonly employed by those skilled in the art. Unless otherwise defined, all terms of art, notations and other scientific terms or terminology used herein are intended to have the meanings commonly understood by those of skill in the art to which this invention pertains. In some cases, terms with commonly understood meanings are defined herein for clarity and/or for ready reference, and the inclusion of such definitions herein should not necessarily be construed to represent a substantial difference over what is generally understood in the art.

All publications mentioned herein are incorporated herein by reference to disclose and describe aspects, methods and/or materials in connection with the cited publications. For example, Levine et al., Aging, 2018 Apr. 18; 10(4):573-591; U.S. Patent Publication 20150259742, U.S. patent application Ser. No. 15/025,185, titled “METHOD TO ESTIMATE THE AGE OF TISSUES AND CELL TYPES BASED ON EPIGENETIC MARKERS”, filed by Stefan Horvath; U.S. patent application Ser. No. 14/119,145, titled “METHOD TO ESTIMATE AGE OF INDIVIDUAL BASED ON EPIGENETIC MARKERS IN BIOLOGICAL SAMPLE”, filed by Eric Villain et al.; and Hannum et al. “Genome-Wide Methylation Profiles Reveal Quantitative Views Of Human Aging Rates.” Molecular Cell. 2013; 49(2):359-367 and patent US2015/0259742, are incorporated by reference in their entirety herein.

DNA methylation refers to chemical modifications of the DNA molecule. Technological platforms such as the Illumina Infinium microarray or DNA sequencing based methods have been found to lead to highly robust and reproducible measurements of the DNA methylation levels of a person. There are more than 28 million CpG loci in the human genome. Consequently, certain loci are given unique identifiers such as those found in the Illumina CpG loci database (see, e.g. Technical Note: Epigenetics, CpG Loci Identification ILLUMINA Inc. 2010). These CG locus designation identifiers are used herein. In this context, one embodiment of the invention is a method of obtaining information useful to observe biomarkers associated with a phenotypic age of an individual by observing the methylation status of one or more of the 513 methylation marker specific GC loci that are identified in Table 5.

The term “epigenetic” as used herein means relating to, being, or involving a chemical modification of the DNA molecule. Epigenetic factors include the addition or removal of a methyl group which results in changes of the DNA methylation levels. Novel molecular biomarkers of aging that observe methylation patterns in genomic DNA, such as those termed “DNA methylation PhenoAge”, or “phenotypic age” (allow one to prognosticate mortality, are interesting to gerontologists (aging researchers), epidemiologists, medical professionals, and medical underwriters for life insurances. Exclusively clinical biomarkers such as lipid levels, body mass index, blood pressures have a long and successful history in the life insurance industry. By contrast, molecular biomarkers of aging have rarely been used.

The profitability of a life insurance product directly depends on the accurate assessment of mortality risk because the costs of life insurance (to the insurance company) are directly proportional to the number of deaths in a given category. Thus, any improvement in assessing mortality risk and in improving the basic classification will directly translate into cost savings. For the reasons noted above, DNA methylation (DNAm) based biomarkers of aging are useful for predicting mortality. Consequently, they are useful the life insurance industry due to their ability to increase the accuracy of medical underwriting. DNAm measurements can provide a host of complementary information that can inform the medical underwriting process. In this context, the DNAm based biomarkers and associated method disclosed herein can be used both to molecularly estimate complete blood counts and to estimate biological age, as well as to directly predict/prognosticate mortality. Using embodiments of the invention disclosed herein, upon completing a medical exam, an insurer can, for example, look at a combination of the clinical biomarker and DNA methylation test results as well as other factors such as family health history and lifestyle choices to classify the applicant into useful classification categories such as: 1) preferred plus/super preferred/preferred select/preferred elite, 2) preferred, 3) standard plus, 4) standard, 5) preferred smoker, 6) standard smoker, 7) table rate A, 8) table rate B, etc. Each of these categories has a distinct mortality risk and usually directly relates to the pricing of the insurance product. The basic classification is largely determined by well established risk factors of mortality such as sex, smoking status, family history of death, prior history of disease (e.g. diabetes status, cancer), and a host of clinical biomarkers (blood pressure, body mass index, cholesterol, glucose levels, hemoglobin A1C).

The term “nucleic acids” as used herein may include any polymer or oligomer of pyrimidine and purine bases, preferably cytosine, thymine, and uracil, and adenine and guanine, respectively. The present invention contemplates any deoxyribonucleotide, ribonucleotide or peptide nucleic acid component, and any chemical variants thereof, such as methylated, hydroxymethylated or glucosylated forms of these bases, and the like. The polymers or oligomers may be heterogeneous or homogeneous in composition, and may be isolated from naturally-occurring sources or may be artificially or synthetically produced. In addition, the nucleic acids may be DNA or RNA, or a mixture thereof, and may exist permanently or transitionally in single-stranded or double-stranded form, including homoduplex, heteroduplex, and hybrid states.

The term “methylation marker” as used herein refers to a CpG position that is potentially methylated. Methylation typically occurs in a CpG containing nucleic acid. The CpG containing nucleic acid may be present in, e.g., in a CpG island, a CpG doublet, a promoter, an intron, or an exon of gene. For instance, in the genetic regions provided herein the potential methylation sites encompass the promoter/enhancer regions of the indicated genes. Thus, the regions can begin upstream of a gene promoter and extend downstream into the transcribed region.

The phrase “selectively measuring” as used herein refers to methods wherein only a finite number of methylation marker or genes (comprising methylation markers) are measured rather than assaying essentially all potential methylation marker (or genes) in a genome. For example, in some aspects, “selectively measuring” methylation markers or genes comprising such markers can refer to measuring more than (or not more than) 500, 200, 100, 75, 50, 25, 10 or 5 different methylation markers or genes comprising methylation markers.

The invention described herein provides novel and powerful predictors of life expectancy, mortality, and morbidity based on DNA methylation levels. In this context, it is critical to distinguish clinical from molecular biomarkers of aging. Clinical biomarkers such as lipid levels, blood pressure, blood cell counts have a long and successful history in clinical practice. By contrast, molecular biomarkers of aging are rarely used. However, this is likely to change due to recent breakthroughs in DNA methylation based biomarkers of aging. Since their inception, DNA methylation (DNAm) based biomarkers of aging promise to greatly enhance biomedical research, clinical applications, patient care, and even medical underwriting when it comes to life insurance policies and other financial products. They will also be more useful for clinical trials and intervention assessment that target aging, since they are more proximal to the biological changes that characterize the aging process compared to upstream clinical read outs of health and disease status.

The disclosure presented herein surrounding the prediction of mortality and morbidity show that these combinations of clinical and DNAm based biomarkers are highly robust and informative for a range of applications. DNAm PhenoAge can not only be used to directly predict/prognosticate mortality but also relate to a host of age related conditions such as heart disease risk, cancer risk, dementia status, cardiovascular disease and various measures of frailty.

The invention disclosed herein has a number of embodiments. One embodiment of the invention is a method of observing biomarkers that are associated with a phenotypic age of an individual. In such embodiments, the method comprises observing a biomarker comprising the state of a clinical variable in the individual comprising at least one of: concentrations of albumin in the individual, concentrations of creatine in the individual, concentrations of glucose in the individual, concentrations of c-reactive protein in the individual, concentrations of alkaline phosphatase in the individual lymphocyte percentage in the individual, mean cell volume in the individual, red blood cell distribution width in the individual, white blood cell count in the individual, and age of the individual at the time of assessment; and, in addition, further observing another biomarker comprising the individual's methylation status at at least 10 513 CpG methylation markers that are identified in Table 5 such that biomarkers associated with the phenotypic age of the individual are observed. In some embodiments, methylation is observed by a process comprising hybridizing genomic DNA obtained from the individual with 513 complementary sequences disposed in an array on a substrate. Optionally, methylation is observed by a process comprising treatment of genomic DNA from the population of cells from the individual with bisulfite to transform unmethylated cytosines of CpG dinucleotides in the genomic DNA to uracil.

In typical embodiments of the invention, at least 3, 4, 5, 6, 7 or 8 clinical variables are observed. In some embodiments of the invention, the second DNA methylation biomarker is observed in a population of leukocytes or epithelial cells obtained from the individual. Optionally the method comprises assessing on or more of the biomarkers in a regression analysis. In certain embodiments, the phenotypic age of the individual is estimated using a weighted average of methylation markers within the set of 513 methylation markers. Embodiments of the invention can further comprise examining at least one factor selected from the diet of the individual, whether the individual smokes and the levels that the individual exercises. Embodiments of the invention can compare the age of the individual at the time of assessment and the phenotypic age so as to obtain information on life expectancy of the individual. In certain embodiments of the invention, the method includes using the phenotypic age to predict the age at which the individual may suffer from one or more age related diseases or conditions. Further embodiments and aspects of the invention are discussed below.

Description of the Phenotypic Age Estimator

Previous work has shown that “phenotypic aging measures”, derived from clinical biomarkers (see, e.g. Levine M E., The Journals of Gerontology Series A: Biological Sciences and Medical Sciences. 2013; 68(6):667-674; Li S et al., Twin Res Hum Genet. 2015; 18(6):720-726; Sebastiani et al., Aging Cell. 2017; and Ferrucci L et al., Public Health Reviews. 2010; 32(2):475-488), strongly predict differences in the risk of all-cause mortality, cause-specific mortality, physical functioning, cognitive performance measures, and facial aging among same-aged individuals. What's more, in representative population data, some of these measures have been shown to be better indicators of remaining life expectancy than chronological age (Levine M E., The Journals of Gerontology Series A: Biological Sciences and Medical Sciences. 2013; 68(6):667-674), suggesting that they are approximating individual-level differences in biological aging rates. We developed a new phenotypic age predictor based on 10 variables total (9 clinical biomarkers and chronological age at the time of the assessment). These variables were selected out of a possible 42 biomarkers, using an elastic net proportion hazards model, and are aggregated into a composite score by forming a weighted average

WeightedAverage=(−Albumin*0.0336+log(Creatinine)*0.0095+Glucose*0.1953+C−reactiveProtein*0.0954−LymphocytePerc*0.0120+MeanCellVolume*0.0268+RedBloodCellDistributionWidth*0.3306+AlkalinePhosphatase*0.0019+WhiteBloodCellCount*0.0554+age*0.0804−19.9067).

Next the weighted average is transformed using a monotonically increasing function to arrive at a phenotypic age estimate (in units of years). Validation data for phenotypic age came from the fourth National Health and Nutrition Examination Survey (NHANES IV), and included up to 17 years of mortality follow-up for n=6,209 national representative US adults. Mortality results show that a one year increase in phenotypic age is associated with a 9% increase in the hazard of all-cause mortality (hazard ratio, HR=1.09, p-value=3.8E-49), a 9% increase in the risk of aging-related mortality(HR=1.09, p=4.5E-34), a 10% increase in the risk of CVD mortality (HR=1.10, p=5.1E-17), a 7% increase in the risk of cancer mortality (HR=1.07, p=7.9E-10), a 20% increase in the risk of diabetes mortality (HR=1.20, p=1.9E-11), and a 9% increase in the risk of lung disease mortality (HR=1.09, p=6.3E-4). Finally, in the proportional hazard model, phenotypic age completely accounted for the effect of chronological age, such that chronological age no longer exhibited a significant positive association with mortality.

Finally, we tested the association between phenotypic age and 1) the number of coexisting morbidities a participant had been diagnosed with, and 2) levels of physical functioning problems. Results showed that after adjusting for chronological age, persons with more coexisting morbidities also display higher phenotypic ages on average (p=3.9E-21). Similarly, those with worse physical functioning tended to have higher phenotypic ages (p=2.1E-10).

Description of DNAm PhenoAge Estimator

Data from the Invecchiare in Chianti (InCHIANTI) study was used to relate blood DNAm levels to phenotypic age. Elastic net regression produced a model in which phenotypic age is predicted by DNAm levels at 513 CpGs. The linear combination of the weighted 513 CpGs yields a DNAm based estimator of phenotypic age, that we refer to as ‘DNAm PhenoAge’.

To demonstrate the utility of DNAm PhenoAge, we used four independent large-scale samples-two samples from Women's Health Initiative (WHI) (n=2,016; and n=2,191), the Framingham Heart Study (FHS) (n=2,553), and the Normative Aging Study (n=657). In these studies, DNAm PhenoAge correlated with chronological age at r=0.67 in WHI (Sample 1), r=0.69 in WHI (Sample2), r=0.78 in FHS, and r=0.62 in the Normative Aging Study. The four validation samples were then used to assess the effects of DNAm PhenoAge on mortality. DNAm PhenoAge was significantly associated with subsequent mortality risk in all studies (independent of chronological age), such that, a one year increase in DNAm PhenoAge is associated with a 4% increase in the risk of all-cause mortality (Meta(FE)=1.042, Meta p=1.1E-36). We also observe strong associations between DNAm PhenoAge and a variety of other aging outcomes. For instance, independent of chronological age, higher DNAm PhenoAge is associated with an increase in a person's number of coexisting morbidities (Meta P-value=4.56E-15), a decrease in likelihood of being disease-free (Meta P-value=1.06E-7), an increase in physical functioning problems (Meta P-value=2.05E-13), an increase in the risk of coronary heart disease (CHD) risk (Meta P-value=2.43E-10, and an earlier age at menopause (Meta P-value=8.22E-4)—suggesting that women were epigenetically older if they had entered menopause earlier.

Additional replication data was used to test for associations with other aging outcomes. For instance, we find that among the 527 women who were cancer free at age 50, accelerated DNAm PhenoAge predicts incident breast cancer (p=0.033, OR: 1.037). We also find a marginally significant reduction of approximately 2.4 years for the DNAm PhenoAge of semi-super centenarian offspring, relative to controls (p=0.065). Using blood methylation data, we evaluated whether DNAm PhenoAge relates to clinically diagnosed dementia in living individuals. Results suggest that those with presumed Alzheimer's disease (AD, n=154) and/or frontotemporal dementia (FTD, n=116) have significantly higher DNAm PhenoAge compared to non-demented (n=334) individuals (P=2.2E-2), and the strength of the association is further increased (P=9.4E-3) when limiting the sample to those ages 75 and older. We also find that DNAm PhenoAge, relates to Down syndrome in two separate blood methylation datasets (p=0.0046 and p=4.0E-11), and similarly relates to HIV infection in two blood datasets (p=6E-6 and p=8.6E-6). We observe a suggestive relationship between DNAm PhenoAge in blood and Parkinson's disease status (p=0.028) for individuals from European ancestry.

We examined the association between DNAm PhenoAge and smoking and found that DNAm PhenoAge also significantly differs by smoking status (p=0.0033). Next, we re-evaluated the morbidity and mortality associations (fully-adjusted) in our four samples, stratifying by smoking status (smokers vs. non-smokers). We find that DNAm PhenoAge is associated with mortality both among smokers (adjusted for pack-years) (Meta(FE)=1.041, Meta p=2.6E-14), and among persons who have never smoked (Meta(FE)=1.027, Meta p=7.9E-7). Moreover, among never smokers, DNAm PhenoAge relates to the number of coexisting morbidities (Meta P-value=7.83E-6), physical functioning status (Meta P-value=2.63E-3), disease free status (Meta P-value=4.38E-4), and CHD (Meta P-value=1.80E-4), while among current smokers, it relates to the number of coexisting morbidities (Meta P-value=4.61E-5), physical functioning status (Meta P-value=1.01E-4), and disease free status (Meta P-value=0.0048), but only exhibits a suggestive association with CHD (Meta P-value=0.084).

We studied whether DNAm PhenoAge of blood predicts lung cancer risk in the first WHI sample. After adjusting for chronological age, race/ethnicity, pack-years, and smoking status, results showed that a one year increase in DNAm PhenoAge is associated with a 5% increase in lung cancer risk (HR=1.05, p=0.031), and when restricting the model to current smokers only, we find that the effect of DNAm PhenoAge on lung cancer mortality is even stronger (HR=1.10, p=0.014).

We also find evidence of social gradients in DNAm PhenoAge, such that those with higher education (p=6E-9) and higher income (p=9E-5) appear younger. DNAm PhenoAge relates to exercise and dietary habits, such that increased exercise (p=7E-5) and markers of fruit/vegetable consumption (such as carotenoids, p=5E-22) are associated with lower DNAm PhenoAge.

We also evaluated DNAm PhenoAge in other non-blood tissues. Although DNAm PhenoAge was developed from DNAm levels assessed in whole blood, our empirical results show that it strongly correlates with chronological age in a host of different tissues. For instance, when examining all tissue concurrently, the correlation between DNAm PhenoAge and chronological age was 0.71. Age correlations in brain tissue ranged from 0.54 to 0.92. Consistent age correlations were also found in breast (r=0.47), buccal cells (r=0.88), dermal fibroblasts (r=0.87), epidermis (r=0.84), colon (r=0.88), heart (r=0.66), kidney (r=0.64), liver (r=0.80), lung (r=055), and saliva (r=0.81).

Novelty Surrounding DNAm PhenoAge

DNA methylation (DNAm) data have given rise to highly accurate age estimation methods known as “epigenetic clocks”. These recently developed DNA methylation-based biomarkers allow one to estimate the epigenetic age of an individual (see, e.g. Levine M E., The Journals of Gerontology Series A: Biological Sciences and Medical Sciences. 2013; 68(6):667-674; Li S et al., Twin Res Hum Genet. 2015; 18(6):720-726; Sebastiani et al., Aging Cell. 2017; and Ferrucci L et al., Public Health Reviews. 2010; 32(2):475-488). For example, the “epigenetic clock”, developed by Horvath, which is based on methylation levels of 353 CpGs, can be used to estimate the age of most human cell types, tissues, and organs (Sebastiani et al., Aging Cell. 2017). The first generation of DNAm based biomarkers of aging were developed using chronological age as a surrogate measure for biological age. While the current epigenetic age estimators exhibit statistically significant associations with many age-related diseases and conditions, the effect sizes are typically small to moderate. While chronological age is arguably the strongest risk factor for aging-related death and disease, it is important to distinguish chronological time from biological aging. Individuals of the same chronological age may exhibit greatly different susceptibilities to age-related diseases and death, which is likely reflective of differences in their underlying biological aging processes (Ferrucci L et al., Public Health Reviews. 2010; 32(2):475-488). Using chronological age as the reference in the developing of epigenetic biomarkers of aging, by definition, may exclude CpGs whose methylation patterns don't display strong time-dependent changes, but instead signal the departure of biological age from chronological age. Thus, we hypothesized that a more powerful epigenetic biomarker of aging could be generated from DNAm by replacing chronological age with a surrogate measure of “phenotypic age” that, in and of itself, differentiates morbidity and mortality risk among same-age individuals.

Using a novel two-step method, we were successful in developing a DNAm based biomarker of aging that is highly predictive of nearly every morbidity and mortality outcome we tested. Our study demonstrates that DNAm PhenoAge greatly outperforms the first generation of DNAm based biomarkers of aging from Hannum (Hannum et al., Mol Cell. 2013; 49) and Horvath (Horvath S., Genome Biol. 2013; 14(R115), in terms of both its predictive accuracy for time to death and its associations with various other aging measures, including disease incidence/prevalence and physical functioning. Most surprisingly, DNAm PhenoAge is associated with age-related conditions in samples other than whole blood, for instance obesity in liver.

Our applications demonstrate that the combination of advanced machine learning methods, relevant functional genomic data (DNA methylation), and large sample sizes resulted in an epigenetic biomarker that outperforms existing molecular biomarkers of aging in terms of its strong relationship with a host of age related conditions. The new DNAm PhenoAge measure performs better than any of molecular biomarker of human aging, when it comes to predicting healthspan and lifespan.

Our results also demonstrate the utility of a novel method for building DNAm based biomarkers of aging. Our development of the new epigenetic biomarker of aging proceeded along two main steps. In step 1, a novel measure of phenotypic age was developed using clinical data. A Cox penalized regression model—where the hazard of aging-related mortality was regressed on clinical markers and chronological age—was used to select variables for inclusion in our phenotypic age score. In step 2, phenotypic age is regressed on DNA methylation data from the same individuals. The regression produced a model in which phenotypic age is predicted by DNAm levels. The linear combination of the weighted CpGs yields a DNAm based estimator of phenotypic age that we refer to as ‘DNAm PhenoAge’ in contrast to the previously published measures of ‘DNAm Age’.

Practicing the Invention of DNAm PhenoAge

To use the epigenetic biomarker one needs to extract DNA from cells or fluids, e.g. human blood cells, saliva, liver, brain tissue. Next, one needs to measure DNA methylation levels in the underlying signature of 513 CpGs (epigenetic markers) that are being used in the mathematical algorithm. The algorithm leads to a “phenotypic age” (the apparent age of an individual resulting from the interaction of its genotype with the environment) for each sample or human subject. The higher the value, the higher the risk of death and disease.

As noted above, embodiments of the present invention relate to methods for estimating the biological age of an individual human tissue or cell type sample based on measuring DNA Cytosine-phosphate-Guanine (CpG) methylation markers that are attached to DNA. In a general embodiment of the invention, a method is disclosed comprising a first step of choosing a source of DNA such as specific biological cells (e.g. T cells in blood) or tissue sample (e.g. blood) or fluid (e.g. saliva). In a second step, genomic DNA is extracted from the collected source of DNA of the individual for whom a biological age estimate is desired. In a third step, the methylation levels of the methylation markers near the specific clock CpGs are measured. In a fourth step, a statistical prediction algorithm is applied to the methylation levels to predict the age. One basic approach is to form a weighted average of the CpGs, which is then transformed to DNA methylation (DNAm) age using a calibration function. As used herein, “weighted average” is a linear combination calculated by giving values in a data set more influence according to some attribute of the data. It is a number in which each quantity included in the linear combination is assigned a weight (or coefficient), and these weightings determine the relative importance of each quantity in the linear combination.

DNA methylation of the methylation markers (or markers close to them) can be measured using various approaches, which range from commercial array platforms (e.g. from Illumina™) to sequencing approaches of individual genes. This includes standard lab techniques or array platforms. A variety of methods for detecting methylation status or patterns have been described in, for example U.S. Pat. Nos. 6,214,556, 5,786,146, 6,017,704, 6,265,171, 6,200,756, 6,251,594, 5,912,147, 6,331,393, 6,605,432, and 6,300,071 and US Patent Application Publication Nos. 20030148327, 20030148326, 20030143606, 20030082609 and 20050009059, each of which are incorporated herein by reference. Other array-based methods of methylation analysis are disclosed in U.S. patent application Ser. No. 11/058,566. For a review of some methylation detection methods, see, Oakeley, E. J., Pharmacology & Therapeutics 84:389-400 (1999). Available methods include, but are not limited to: reverse-phase HPLC, thin-layer chromatography, SssI methyltransferases with incorporation of labeled methyl groups, the chloracetaldehyde reaction, differentially sensitive restriction enzymes, hydrazine or permanganate treatment (m5C is cleaved by permanganate treatment but not by hydrazine treatment), sodium bisulfite, combined bisulphate-restriction analysis, and methylation sensitive single nucleotide primer extension.

The methylation levels of a subset of the DNA methylation markers disclosed herein are assayed (e.g. using an Illumina™ DNA methylation array, or using a PCR protocol involving relevant primers). To quantify the methylation level, one can follow the standard protocol described by Illumina™ to calculate the beta value of methylation, which equals the fraction of methylated cytosines in that location. The invention can also be applied to any other approach for quantifying DNA methylation at locations near the genes as disclosed herein. DNA methylation can be quantified using many currently available assays which include, for example:

a) Molecular break light assay for DNA adenine methyltransferase activity is an assay that is based on the specificity of the restriction enzyme DpnI for fully methylated (adenine methylation) GATC sites in an oligonucleotide labeled with a fluorophore and quencher. The adenine methyltransferase methylates the oligonucleotide making it a substrate for DpnI. Cutting of the oligonucleotide by DpnI gives rise to a fluorescence increase.

b) Methylation-Specific Polymerase Chain Reaction (PCR) is based on a chemical reaction of sodium bisulfite with DNA that converts unmethylated cytosines of CpG dinucleotides to uracil or UpG, followed by traditional PCR. However, methylated cytosines will not be converted in this process, and thus primers are designed to overlap the CpG site of interest, which allows one to determine methylation status as methylated or unmethylated. The beta value can be calculated as the proportion of methylation.

c) Whole genome bisulfite sequencing, also known as BS-Seq, is a genome-wide analysis of DNA methylation. It is based on the sodium bisulfite conversion of genomic DNA, which is then sequencing on a Next-Generation Sequencing (NGS) platform. The sequences obtained are then re-aligned to the reference genome to determine methylation states of CpG dinucleotides based on mismatches resulting from the conversion of unmethylated cytosines into uracil.

d) The Hpall tiny fragment Enrichment by Ligation-mediated PCR (HELP) assay is based on restriction enzymes' differential ability to recognize and cleave methylated and unmethylated CpG DNA sites.

e) Methyl Sensitive Southern Blotting is similar to the HELP assay but uses Southern blotting techniques to probe gene-specific differences in methylation using restriction digests. This technique is used to evaluate local methylation near the binding site for the probe.

f) ChIP-on-chip assay is based on the ability of commercially prepared antibodies to bind to DNA methylation-associated proteins like MeCP2.

g) Restriction landmark genomic scanning is a complicated and now rarely-used assay is based upon restriction enzymes' differential recognition of methylated and unmethylated CpG sites. This assay is similar in concept to the HELP assay.

h) Methylated DNA immunoprecipitation (MeDIP) is analogous to chromatin immunoprecipitation. Immunoprecipitation is used to isolate methylated DNA fragments for input into DNA detection methods such as DNA microarrays (MeDIP-chip) or DNA sequencing (MeDIP-seq).

i) Pyrosequencing of bisulfite treated DNA is a sequencing of an amplicon made by a normal forward primer but a biotinylated reverse primer to PCR the gene of choice. The Pyrosequencer then analyses the sample by denaturing the DNA and adding one nucleotide at a time to the mix according to a sequence given by the user. If there is a mismatch, it is recorded and the percentage of DNA for which the mismatch is present is noted. This gives the user a percentage methylation per CpG island.

In certain embodiments of the invention, the genomic DNA is hybridized to a complimentary sequence (e.g. a synthetic polynucleotide sequence) that is coupled to a matrix (e.g. one disposed within a microarray such as on a DNA chip). Optionally, the genomic DNA is transformed from its natural state via amplification by a polymerase chain reaction process. For example, prior to or concurrent with hybridization to an array, the sample may be amplified by a variety of mechanisms, some of which may employ PCR. See, for example, PCR Technology: Principles and Applications for DNA Amplification (Ed. H. A. Erlich, Freeman Press, NY, N.Y., 1992); PCR Protocols: A Guide to Methods and Applications (Eds. Innis, et al., Academic Press, San Diego, Calif., 1990); Mattila et al., Nucleic Acids Res. 19, 4967 (1991); Eckert et al., PCR Methods and Applications 1, 17 (1991); PCR (Eds. McPherson et al., IRL Press, Oxford); and U.S. Pat. Nos. 4,683,202, 4,683,195, 4,800,159, 4,965,188, and 5,333,675. The sample may be amplified on the array. See, for example, U.S. Pat. No. 6,300,070, which is incorporated herein by reference.

In addition to using art accepted modeling techniques (e.g. regression analyses), embodiments of the invention can include a variety of art accepted technical processes. For example, in certain embodiments of the invention, a bisulfite conversion process is performed so that cytosine residues in the genomic DNA are transformed to uracil, while 5-methylcytosine residues in the genomic DNA are not transformed to uracil. Kits for DNA bisulfite modification are commercially available from, for example, MethylEasy™ (Human Genetic Signatures™) and CpGenome™ Modification Kit (Chemicon™). See also, WO04096825A1, which describes bisulfite modification methods and Olek et al. Nuc. Acids Res. 24:5064-6 (1994), which discloses methods of performing bisulfite treatment and subsequent amplification. Bisulfite treatment allows the methylation status of cytosines to be detected by a variety of methods. For example, any method that may be used to detect a SNP may be used, for examples, see Syvanen, Nature Rev. Gen. 2:930-942 (2001). Methods such as single base extension (SBE) may be used or hybridization of sequence specific probes similar to allele specific hybridization methods. In another aspect the Molecular Inversion Probe (MIP) assay may be used.

The 513 CpG sites discussed herein are found in Table 5 that is included with this application. The Illumina method takes advantage of sequences flanking a CpG locus to generate a unique CpG locus cluster ID with a similar strategy as NCBI's refSNP IDs (rs#) in dbSNP (see, e.g. Technical Note: Epigenetics, CpG Loci Identification ILLUMINA Inc. 2010). Further information on the present invention can be found in Levine et al., Aging, 2018 Apr. 18; 10(4):573-591 which is incorporated herein by reference.

Examples

Estimating Phenotypic Age from Clinical Biomarkers

Our development of the new epigenetic biomarker of aging proceeded along three main steps (FIG. 1). In step 1, a novel measure of phenotypic age was developed using clinical data from the third National Health and Nutrition Examination Survey (for step 2 III, n=9,926). NHANES III is a nationally-representative sample, with over twenty-three years of mortality follow-up. A Cox penalized regression model—where the hazard of aging-related mortality was regressed on forty-two clinical markers and chronological age—was used to select variables for inclusion in our phenotypic age score. Of the forty-two biomarkers included in the penalized Cox regression model, ten variables (including chronological age) were selected for the phenotypic age predictor (Table 4). These nine biomarkers and chronological age were then combined in a phenotypic age estimate (in units of years) as detailed in Methods.

Validation data for phenotypic age came from the fourth National Health and Nutrition Examination Survey (NHANES IV), and included up to 17 years of mortality follow-up for n=6,209 national representative US adults. Mortality results show (Table 1) that a one year increase in phenotypic age is associated with a 9% increase in the risk of all-cause mortality (HR=1.09, p=3.8E-49), a 9% increase in the risk of aging-related mortality (HR=1.09, p=4.5E-34), a 10% increase in the risk of CVD mortality (HR=1.10, p=5.1E-17), a 7% increase in the risk of cancer mortality (HR=1.07, p=7.9E-10), a 20% increase in the risk of diabetes mortality (HR=1.20, p=1.9E-11), and a 9% increase in the risk of lung disease mortality (HR=1.09, p=6.3E-4). Finally, in the proportional hazard model, phenotypic age completely accounted for the effect of chronological age, such that chronological age no longer exhibited a significant positive association with mortality.

We further tested whether the phenotypic age associations held-up when examining mortality among three age strata-young and middle-aged adults (20-64 years at baseline), older adults (65-79 years at baseline), and the oldest-old (80+ years at baseline). Results showed consistent findings for all-cause, aging-related, CVD, cancer, diabetes, and lung disease within all age strata (Table 1). Finally, to ensure that phenotypic age didn't simply represent an end-of-life marker, we removed participants who died within five years of baseline, and then re-examined mortality associations. Again, we find significant associations for all mortality outcomes, except Alzheimer's disease (Table 1).

Finally, as shown in FIG. 5, we tested the association between phenotypic age and 1) the number of coexisting morbidities a participant had been diagnosed with, and 2) levels of physical functioning problems. Results showed that after adjusting for chronological age, persons with more coexisting morbidities also displayed higher phenotypic ages on average (p=3.9E-21). Similarly, those with worse physical functioning tended to have higher phenotypic ages (p=2.1E-10).

An Epigenetic Biomarker of Aging (DNAm PhenoAge)

In step 2 (FIG. 1), data from the Invecchiare in Chianti (InCHIANTI) study was used to relate blood DNAm levels to phenotypic age. Elastic net regression produced a model in which phenotypic age is predicted by DNAm levels at 513 CpGs. The linear combination of the weighted 513 CpGs yields a DNAm based estimator of phenotypic age (mean=58.9, s.d.=18.2, range=9.1-106.1), that we refer to as ‘DNAm PhenoAge’ in contrast to the previously published Hannum and Horvath ‘DNAm Age’ measures.

While our new clock was trained on cross-sectional data in InCHIANTI, we capitalized on the repeated time-points to test whether changes in DNAm PhenoAge are related to changes in phenotypic age. As expected, between 1998 and 2007, mean change in DNAm PhenoAge was 8.51 years, whereas mean change in phenotypic age was 8.88 years. Moreover, participants' phenotypic age (adjusting for chronological age) at the two time-points was correlated at r=0.50, whereas participants' DNAm PhenoAge (adjusting for chronological age) at the two time-points was correlated at r=0.68 (FIG. 6). Finally, as shown in FIG. 6, we find that the change in phenotypic age between 1998 and 2007 is highly correlated with the change in DNAm PhenoAge between these two time-points (r=0.74, p=3.2E-80).

DNAm PhenoAge Strongly Relates to Aging Outcomes

In step 3 (FIG. 1), DNAm PhenoAge was calculated in four independent large-scale samples-two samples from Women's Health Initiative (WHI) (n=2,016; and n=2,191), the Framingham Heart Study (FHS) (n=2,553), and the Normative Aging Study (n=657). In these studies, DNAm PhenoAge correlated with chronological age at r=0.67 in WHI (Sample 1), r=0.69 in WHI (Sample2), r=0.78 in FHS, and r=0.62 in the Normative Aging Study. The four validation samples were then used to assess the effects of DNAm PhenoAge on mortality in comparison to the Horvath and Hannum DNAm Age measures. As shown in FIG. 2, DNAm PhenoAge was significantly associated with subsequent mortality risk in all studies (independent of chronological age), such that, a one year increase in DNAm PhenoAge is associated with a 4% increase in the risk of all-cause mortality (Meta(FE)=1.042, Meta p=1.1E-36). To better conceptualize what this increase represents, we compared the predicted life expectancy and mortality risk for person's representing the top 5% (fastest agers), the average, and the bottom 5% (slowest agers). Results suggest that those in the top 5% of fastest agers have a mortality hazard of death that is about 1.57 times that of the average person, i.e. your hazard of death is 57% higher than that of an average person. Further, contrasting the 5% fastest agers with the 5% slowest agers, we find that the hazard of death of the fastest agers is 2.47 times higher than that of the bottom 5% slowest agers (HR=1.042^(11.0)/1.042^(−10.5)). Finally, both observed and predicted Kaplan-Meier survival estimates showed that faster agers had much lower life expectancy and survival rates compared to average and/or slow agers (FIG. 2).

We also observe strong association between DNAm PhenoAge and a variety of other aging outcomes (Table 2). For instance, independent of chronological age, higher DNAm PhenoAge is associated with an increase in a person's number of coexisting morbidities (Meta P-value=4.56E-15), a decrease in likelihood of being disease-free (Meta P-value=1.06E-7), an increase in physical functioning problems (Meta P-value=2.05E-13), an increase in the risk of CHD risk (Meta P-value=2.43E-10, an earlier age at menopause (Meta P-value=8.22E-4)—suggesting that women were epigenetically older if they had entered menopause earlier.

Additional replication data was used to test for associations with other aging outcomes, which have previously been shown to relate to the first generation of epigenetic biomarkers^(14,15,23-26) For instance, we find that among the 527 women who were cancer free at age 50, accelerated DNAm PhenoAge predicts incident breast cancer (p=0.033, OR: 1.037). We also find a marginally significant reduction of approximately 2.4 years for the DNAm PhenoAge of semi-super centenarian offspring, relative to controls (P=−2.40, p=0.065). Using blood methylation data, we evaluated whether DNAm PhenoAge relates to clinically diagnosed dementia in living individuals. Results suggest that those with presumed Alzheimer's disease (AD, n=154) and/or frontotemporal dementia (FTD, n=116) have significantly higher DNAm PhenoAge compared to non-demented (n=334) individuals (P=2.2E-2), and the strength of the association is further increased (P=9.4E-3) when limiting the sample to those ages 75 and older. We also find that DNAm PhenoAge, relates to Down syndrome in two separate blood methylation datasets (p=0.0046 and p=4.0E-11), and similarly relates to HIV infection in two blood datasets (p=6E-6 and p=8.6E-6). We observe a suggestive relationship between DNAm PhenoAge in blood and Parkinson's disease status (p=0.028) for individuals from European ancestry.

DNAm PhenoAge Versus Behavioral and Demographic Characteristics

Given the recent study in which Zhang and colleagues²⁷ developed an epigenetic mortality predictor that turned out to be an estimate of smoking habits, we examined the association between DNAm PhenoAge and smoking. As shown in FIG. 7, we find that DNAm PhenoAge also significantly differs by smoking status (p=0.0033). Next, we re-evaluated the morbidity and mortality associations (fully-adjusted) in our four samples, stratifying by smoking status (smokers vs. non-smokers) (FIG. 8 & Table 4). We find that DNAm PhenoAge is associated with mortality both among smokers (adjusted for pack-years) (Meta(FE)=1.041, Meta p=2.6E-14), and among persons who have never smoked (Meta(FE)=1.027, Meta p=7.9E-7). Moreover, as shown in Table 4, among never smokers, DNAm PhenoAge relates to the number of coexisting morbidities (Meta P-value=7.83E-6), physical functioning status (Meta P-value=2.63E-3), disease free status (Meta P-value=4.38E-4), and CHD (Meta P-value=1.80E-4), while among current smokers, it relates to the number of coexisting morbidities (Meta P-value=4.61E-5), physical functioning status (Meta P-value=1.01E-4), and disease free status (Meta P-value=0.0048), but only exhibits a suggestive association with CHD (Meta P-value=0.084). We previously reported that Horvath DNAm age of blood predicts lung cancer risk in the first WHI sample²⁸. Using the same data, we replicate this finding for DNAm PhenoAge. After adjusting for chronological age, race/ethnicity, pack-years, and smoking status, results showed that a one year increase in DNAm PhenoAge is associated with a 5% increase in lung cancer risk (HR=1.05, p=0.031), and when restricting the model to current smokers only, we find that the effect of DNAm PhenoAge on lung cancer mortality is even stronger (HR=1.10, p=0.014).

In evaluating the relationship between DNAm PhenoAge and social, behavioral, and demographic characteristics we observe significant differences between racial/ethnic groups (p=5.1E-5), with non-Hispanic blacks having the highest DNAm PhenoAge on average, and non-Hispanic whites having the lowest (FIG. 9). We also find evidence of social gradients in DNAm PhenoAge, such that those with higher education (p=6E-9) and higher income (p=9E-5) appear younger. DNAm PhenoAge relates to exercise and dietary habits, such that increased exercise (p=7E-5) and markers of fruit/vegetable consumption (such as carotenoids, p=5E-22) are associated with lower DNAm PhenoAge, whereas smoking (p=3E-6) was associated with increased DNAm PhenoAge (FIG. 10A). Finally, these associations were re-examined in step-wise multivariate models. Overall, we find that associations for race/ethnicity, education, smoking, CRP, triglycerides, protein consumption, and metabolic syndrome are generally maintained (FIG. 10B).

DNAm PhenoAge in Other Tissues

Although DNAm PhenoAge was developed from DNAm levels assessed in whole blood, our empirical results show that it strongly correlates with chronological age in a host of different tissues (FIG. 3). For instance, when examining all tissue concurrently, the correlation between DNAm PhenoAge and chronological age was 0.71. Age correlations in brain tissue ranged from 0.54 to 0.92. Consistent age correlations were also found in breast (r=0.47), buccal cells (r=0.88), dermal fibroblasts (r=0.87), epidermis (r=0.84), colon (r=0.88), heart (r=0.66), kidney (r=0.64), liver (r=0.80), lung (r=055), and saliva (r=0.81).

Using the Horvath DNAm age measure, we previously found that body mass index is correlated with epigenetic age acceleration in two independent human liver samples (r=0.42 and r=0.42 in liver data sets 1 and 2, respectively)²⁹. Using the same data, we replicated this finding using the new measure of PhenoAge acceleration (r=0.32, p=0.011 and r=0.48 p=7.7E-6 in liver data set 1 and 2, respectively. Interestingly we also find a significant correlation between BMI and DNAm PhenoAge acceleration in the first adipose data set (r=0.43, p=1.2E-23 using n=648 adipose samples from the Twins UK study) but not in a second smaller adipose data set (n=32 samples).

Biological Interpretation of DNAm PhenoAge

To test the hypothesis that DNAm phenotypic age acceleration captures aspects of the age-related decline of the immune system, we correlated DNAm PhenoAge acceleration with estimated blood cell count (FIG. 11). After adjusting for age, we find that DNAm PhenoAge acceleration is negatively correlated with naïve CD8+ T cells (r=−0.34, p=5.3E-47), naïve CD4+ T cells (r=−0.29, p=4.2E-34), CD4+ helper T cells (r=−0.34, p=5.3E-47), and B cells (r=−0.20, p=1E-16). Further, phenotypic age acceleration is positively correlated with the proportion of granulocytes (r=0.34, p=5.3E-47), exhausted CD8+(defined as CD28-CD45RA−) T cells (r=0.21, p=2.7E-18), and plasma blast cells (r=0.28, p=8.2E-32). These results are consistent with age related changes in blood cells.³⁰ However, the strong association between DNAm PhenoAge and mortality/morbidity outcomes does not simply reflect changes in blood cell composition as can be seen from the fact that the associations between DNAm PhenoAge and morbidity and mortality held-up even after adjusting for estimates of seven blood cell count measures (FIG. 12).

In our functional enrichment analysis of the chromosomal locations of the 513 CpGs, we found that 149 CpGs whose age correlation exceeded 0.2 tended to be located in CpG islands (p=0.0045, FIG. 13) and were significantly enriched with polycomb group protein targets (p=8.7E-5, FIG. 13) which echoes results of epigenome wide studies of aging effects^(4,31,32).

Our heritability analysis of the DNAm PhenoAge acceleration used the SOLAR polygenic model to estimate the proportion of phenotypic variance explained by family relationship in the Framingham Heart Study pedigrees. The model assumes additive genetic heritability in a polygenic model, adjusting for chronological age and sex. The heritability estimated by the SOLAR polygenic model was (h²=0.33) among persons of European ancestry. Similarly, a heritability estimate from SNP data was calculated from WHI data using GCTA-GREML analysis. In this model, we find that heritability is estimated at h²=0.51 for participants of European ancestry.

Conclusion

Using a novel two-step method, we were successful in developing a DNAm based biomarker of aging that is highly predictive of nearly every morbidity and mortality outcome we tested. Our study demonstrates that DNAm PhenoAge greatly outperforms the first generation of DNAm based biomarkers of aging from Hannum⁹ and Horvath¹⁰, in terms of both its predictive accuracy for time to death and its associations with various other aging measures, including disease incidence/prevalence and physical functioning. Most surprisingly, DNAm PhenoAge is associated with age-related conditions in samples other than whole blood, for instance obesity in liver.

Our applications demonstrate that the combination of advanced machine learning methods, relevant functional genomic data (DNA methylation), and large sample sizes resulted in an epigenetic biomarker that outperforms existing molecular biomarkers. However, the unbiased, data-driven approach used in its construction entails that it is challenging to understand the molecular causes and consequences of DNAm PhenoAge. To partially address this challenge, we employed three approaches: i) study on the relationship between phenotypic aging and changes in blood cell counts, ii) functional enrichment studies of the underlying CpGs, iii) heritability analysis. Although DNAm PhenoAge captures some aspects of the age-related decline in the immune system, these changes in cell composition do not explain the strong association between DNAm PhenoAge and mortality/morbidity outcomes. Our functional enrichment study demonstrates that age related DNA methylation changes in polycomb group protein targets must play a role, which echoes results from previous epigenome wide studies of aging effects^(4,31,32) Our heritability analysis suggests that there is a genetic basis for differences in DNAm PhenoAge, after adjusting for chronological age. Our results also suggest DNAm PhenoAge may respond to modifiable lifestyle factors. In moving forward, it will be important to establish causative pathways to test whether DNAm PhenoAge mediates the links between these precipitating factors and aging-related outcomes (i.e. social, behavioral, environmental conditions→DNAm PhenoAge→morbidity/mortality).

Overall, we expect that DNAm PhenoAge will become a useful molecular biomarker for human anti-aging studies because it is a highly robust, blood based biomarker that captures organismal age and the functional state of many organ systems and tissues.

Methods

Using the NHANES training data, we applied a Cox penalized regression model—where the hazard of aging-related mortality (mortality from diseases of the heart, malignant neoplasms, chronic lower respiratory disease, cerebrovascular disease, Alzheimer's disease, Diabetes mellitus, nephritis, nephrotic syndrome, and nephrosis) was regressed on forty-two clinical markers and chronological age to select variables for inclusion in our phenotypic age score. Ten-fold cross-validation was employed to select the parameter value, lambda, for the penalized regression. In order to develop a sparse phenotypic age estimator (the fewest biomarker variables needed to produce robust results) we selected a lambda of 0.0192, which represented a one standard deviation increase over the lambda with minimum mean-squared error during cross-validation (FIG. 14). Of the forty-two biomarkers included in the penalized Cox regression model, this resulted in ten variables (including chronological age) that were selected for the phenotypic age predictor.

These nine biomarkers and chronological age were then included in a parametric proportional hazards model based on the Gompertz distribution. Based on this model, we estimated the 10-year (120 months) mortality risk of the j-the individual. Next, the mortality score was converted into units of years The resulting phenotypic age estimate was regressed DNA methylation data using an elastic net regression analysis. The penalization parameter was chosen to minimize the cross validated mean square error rate (FIG. 14), which resulted in 513 CpGs.

As noted above, these nine biomarkers and chronological age were then included in a parametric proportional hazards model based on the Gompertz distribution. Based on this model, we estimated the 10-year (120 months) mortality risk of the j-the individual based on the cumulative distribution function

MortalityScore_(j)=CDF(120,X_(j))=1−e ^(−e) ^(x) ^(j) ^(b) ^((exp(120*y)−1)/y)

where xb=represents the linear combination of biomarkers from the fitted model (Table 4):

WeightedAverage=(−Albumin*0.0336+log(Creatinine)*0.0095+Glucose*0.1953+C−reactiveProtein*0.0954−LymphocytePerc*0.0120−+MeanCellVolume*0.0268+RedBloodCellDistributionWidth*0.3306+AlkalinePhosphatase*0.0019+WhiteBloodCellCount*0.0554+age*0.0804−19.9067).

Next, the mortality score was converted into units of years using the following equation

PhenotypicAge_(j)=141.50225+ln(−0.00553*ln(1−MortalityScore_(j))))/0.090165

Statistical Details on the Gompertz Proportional Hazards Model for Phenotypic Age Estimation

The Gompertz regression is parameterized only as a proportional hazards model. This model has been extensively used extensively for modeling mortality data. The Gompertz distribution implemented is the two-parameter function as described in Lee and Wang (2003)¹, with the following hazard and survivor functions:

h(t)=λexp(γt)

S(t)=exp{−λγ⁻¹(e ^(γt)−1)}

The covariates of the j-th individual are including in the model using the following parametrization: λ_(j)=exp(x_(j)β) which implies that the baseline hazard is given by h₀(t)=exp(μt) where γ is an ancillary parameter to be estimated from the data.

The cumulative distribution function of the Gompertz model is given by

CDF(t,x)=1−exp(−exp(xb)(exp(γt)−1)/γ)

where t denotes time (here in units of months) and xb=Σ_(u=1) ^(p) x^(u)b^(u)+b⁰.

We used the STATA software (StataCorp. 2001. Statistical Software: Release 7.0) to carry out the Gompertz regression analysis.

In step 1, we fit a parametric proportional hazards model analysis with Gompertz distribution using the STATA commands

stset person_months [pweight=wt], failure(mortstat==1) streg var1 var2 var3 . . . vark,dist(gomp)

The Gompertz regression analysis resulted in coefficient values and parameter values (Table 1) and γ=0.0076927.

In step 2, we used the cumulative distribution function of the Gompertz model to estimate the 120-month mortality risk of each individual. Thus, CDF(t=120,x_(j)) denotes the probability that the j-th individual will die within the next 120 months. In step 3, carried out another parametric proportional hazards model analysis with Gompertz distribution, but only including chronological age as a IV. We will refer to this analysis as the univariate Gompertz regression model since it only involved one covariate (age). The resulting estimate of the cumulative distribution function CDF·univariate(t,age)

CDF.univariate(t, age) = 1 − e^({−e^((age * b¹ + b⁰))γ⁻¹(e^(γ t) − 1)})

allowed us to estimate the probability that the j-th individual with die within 120 months as follows CDF·univariate(120,age_(j)) where age_(j) is the age of the j-th individual. In step 4, we solved the equation CDF(120,x_(j))=CDF·univariate(120,age_(j)) for the variable age_(j). The resulting solution for the j-th individual, referred to as PhenotypicAge, is given by

${PhenotypicAge}_{j} = {{14{1.5}0225} + \frac{\ln \left( {{- {0.0}}0553*{\ln \left( {1 - {{CDF}\left( {120,x_{j}} \right)}} \right)}} \right)}{{0.0}90165}}$

Data Used to Generate DNAM Phenoage

Participants ages 20 and over in NHANES III (1988-94) were used as the training sample to develop a new and improved measure of phenotypic aging (n=9,926), while participants ages 20 and over in NHANES IV (1999-2014) were used to validate the association between phenotypic aging and age-related morbidity and mortality (n=6,209). Overall, NHANES III had available mortality follow-up for up to 23 (n=deaths) and NHANES IV had available mortality follow-up for up to 17 years (n=deaths). InCHIANTI included longitudinal (two time-points-1998 and 2007) phenotypic and DNAm data on n=456 male and female participants, ages 21-91 in 1998, and 30-100 in 2007. Participants from WHI included 2,107 post-menopausal women, who were ages 50-80 at baseline and were followed-up for just over 20 years.

Steps for Measuring the DNA Methylation PhenoAge of a Tissue Sample and Estimating DNA Methylation-Based Predictors of Mortality

Step 1: Obtain Cells from Blood, Saliva, or Other Sources of DNA from an Individual. There are several options. Blood tubes collected by venipunture: Blood tubes collected by venipuncture will result in a large amount of high quality DNA from a relevant tissue. The invention applies to DNA from whole blood, or peripheral blood mononuclear cells or even sorted blood cell types. Saliva spit kit: Dried blood spots can be easily collected by a finger prick method. The resulting blood droplet can be put on a blood card, e.g. http://www.lipidx.com/dbs-kits/.

Step 2: Generate DNA Methylation Data

This step will be carried out by the lab that collects the samples.

Step 2a: Extract the genomic DNA from the cells Step 2b: Measure cytosine DNA methylation levels. Several approaches can be used for measuring DNA methylation including sequencing, bisulfite sequencing, arrays, pyrosequencing, liquid chromatography coupled with tandem mass spectrometry.

Our invention applies to any platform used for measuring DNA methylation data. In particular, it can be used in conjunction with the latest Illumina methylation array platform the EPIC array or the older platforms (Infinium 450K array or 27K array). Our coefficient values used pertain to the “beta values” whose values lie between 0 and 1 but it could be easily adapted to other metrics of assessing DNA methylation, e.g. “M values”.

Step 3: Estimate the DNA Methylation PhenoAge Estimate

The DNAm PhenoAge estimate can be estimated as a weighted linear combination of 513 CpGs in Table 5. This table also includes the probe designation/identifier used in the Illumina Infinium 450K array.

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Tables

TABLE 1 Mortality Validations for Phenotypic Age Mortality Cause Cases HR P-Value Full Sample All-Cause 1052 1.09 3.8E−49 Aging-Related 661 1.09 4.5E−34 CVD 272 1.10 5.1E−17 Cancer 265 1.07 7.9E−10 Alzheimer's 30 1.04 2.6E−1  Diabetes 41 1.20 1.9E−11 Lung 53 1.09 6.3E−4  80 Years and Over All-Cause 398 1.07 8.8E−15 Aging-Related 165 1.08 6.1E−10 CVD 112 1.08 9.9E−6  Cancer 69 1.08 4.0E−4  Alzheimer's 11 1.00 9.6E−1  Diabetes 9 1.14 2.5E−2  Lung 8 1.09 5.7E−2  65-79 Years All-Cause 510 1.10 6.2E−29 Aging-Related 343 1.10 2.4E−19 CVD 133 1.11 5.0E−10 Cancer 99 1.07 5.0E−5  Alzheimer's 16 1.12 1.7E−2  Diabetes 25 1.22 5.2E−8  Lung 28 1.07 6.4E−2  20-64 Years All-Cause 144 1.10 6.4E−9  Aging-Related 100 1.11 7.3E−8  CVD 27 1.14 4.4E−4  Cancer 55 1.09 2.1E−3  Alzheimer's 3 0.66 7.0E−2  Diabetes 7 1.24 2.7E−3  Lung 8 1.20 6.5E-3  5 + Years Survival All-Cause 575 1.08 9.0E−21 Aging-Related 350 1.09 2.0E−16 CVD 141 1.10 6.6E−10 Cancer 128 1.05 3.7E−3  Alzheimer's 24 1.05 2.5E−1  Diabetes 26 1.21 4.1E−9  Lung 31 1.08 3.3E−2 

TABLE 2 Morbidity Validation for DNAm PhenoAge Physical Comorbidity Count Disease Free Status CHD Risk Functioning Sample Coefficient P−value Coefficient P−value Coefficient P−value Coefficient P−value DNAm PhenoAge WHI Sample 1 0.008 2.38E−1 −0.002 3.82E−1 0.016 5.36E−2 −0.396 1.04E−4 (Non-Hispanic White) WHI Sample 2 0.031 2.95E−7 −0.026 1.63E−2 0.023 1.89E−1 −0.361 3.81E−5 (Non-Hispanic White) WHI Sample 1 0.013 6.15E−2 −0.006 2.40E−2 0.021 2.02E−2 −0.423 4.50E−4 (Non-Hispanic Black) WHI Sample 2 0.014 7.67E−2 −0.023 6.98E−2 0.048 2.27E−2 −0.473 3.75E−4 (Non-Hispanic Black) WHI Sample 1 (Hispanic) 0.024 1.64E−2 −0.004 3.67E−1 0.033 5.07E−2 −0.329 7.37E−2 WHI Sample 2 (Hispanic) 0.003 7.83E−1 0.002 9.28E−1 0.073 1.98E−1 −0.377 6.54E−2 FHS 0.022 3.93E−7 −0.034 1.59E−3 0.028 5.47E−6 −0.016 4.60E−1 NAS 0.023 7.59E−6 −0.062 2.00E−4 0.03 2.27E−2 NA NA Meta P-value (Stouffer) 4.56E−15 1.06E−7 2.43E−10 2.05E−13 DNAm Age (Hannum) WHI Sample 1 0.007 3.90E−1 −0.003 3.48E−1 0.013 2.36E−1 −0.399 2.90E−3 (Non-Hispanic White) WHI Sample 2 0.025 1.53E−3 −0.02 1.55E−1 0.022 3.30E−1 −0.284 1.43E−2 (Non-Hispanic White) WHI Sample 1 0.022 2.72E−2 −0.007 6.03E−2 0.015 2.67E−1 −0.345 4.29E−2 (Non-Hispanic Black) WHI Sample 2 0.022 6.34E−2 −0.008 6.62E−1 0.055 6.12E−2 −0.323 9.56E−2 (Non-Hispanic Black) WHI Sample 1 (Hispanic) 0.01 4.33E−1 −0.01 6.24E−2 0.011 6.10E−1 −0.599 1.16E−2 WHI Sample 2 (Hispanic) −0.012 4.17E−1 0.035 0.209 −0.012 0.885 0.04 0.348 FHS 0.019 5.94E−4 −0.03 0.026 0.022 0.015 0.002 0.928 NAS 0.009 2.19E−1 −0.026 0.226 0.025 0.183 NA NA Meta P-value (Stouffer) 6.76E−6 2.03E−3 1.10E−3 2.03E−5 DNAm Age (Horvath) WHI Sample 1 0.007 3.49E−1 −0.004 0.169 0.001 0.912 −0.08 0.071 (Non-Hispanic White) WHI Sample 2 0.006 4.54E−1 −0.006 0.676 −0.02 0.382 −0.078 0.001 (Non-Hispanic White) WHI Sample 1 0.018 3.96E−2 −0.006 0.062 0.009 0.407 −0.141 0.004 (Non-Hispanic Black) WHI Sample 2 −0.008 4.20E−1 0.002 0.905 0.004 0.875 0 0.998 (Non-Hispanic Black) WHI Sample 1 (Hispanic) 0.012 3.65E−1 −0.007 0.186 −0.001 0.978 −0.014 0.841 WHI Sample 2 (Hispanic) −0.025 6.69E−2 −0.013 0.619 −0.024 0.757 0.045 0.332 FHS 0.011 5.82E−2 −0.021 0.083 0.007 0.519 0.01 0.673 NAS 0.011 7.90E−2 −0.039 0.045 0.006 0.714 NA NA Meta P-value (Stouffer) 4.54E−2 1.31E−3 7.51E−1 4.66E−4

TABLE 4 Phenotypic Aging Measures and Gompertz Coefficients Variable Units Weight Albumin Liver g/L −0.0336 Creatinine (log) Kidney umol/L 0.0095 Glucose, serum Metabolic mmol/L 0.1953 C-reactive protein Inflammation mg/dL 0.0954 Lymphocyte percent Immune % −0.0120 Mean cell volume Immune fL 0.0268 Red cell distribution width Immune % 0.3306 Alkaline phosphatase Liver U/L 0.0019 White blood cell count Immune 1000 cells/uL 0.0554 Age Years 0.0804 Constant −19.9067 Gamma 0.0077

TABLE 5 513 Polynucleotides having CpGM ethylation Sites Useful in Embodiments of the Invention. SEQ ID Probe Sequence With [CpG] Marked NO cg000 TAAAAATGATCATTTCTGCTTACGTTTACAGCTCATTTCATATTCTGCAAAATGT 1 79056 TTTCC[CG]TCTGCTATCACCGCCGCCATCCTCACAGCAGCCTGGGAGAAAGGCA GAGCCAAAAGTCTC cg000 GCCCTGCGGGAAGGGACTGGGGTTGGGAGGACGCTGGGCCTCTGGGTTTAGG 2 83937 CCTCACTC[CG]CCGGAGAGGGGGAGACAAACAGGCCAGACTCTCTTCCCAGA GCAGGAGCGACCCCTCCCC cg001 GCGTTTGTAGGCAGTGATGTCACAGAGTGCCTTCATGCTCCTCGGGTCTCCGGT 3 13951 TCTCCC[CG]GACCTCTGTAGTCCTCATTGCCAAAGTTGTACCCCCTGGGGAGTG CACCCTGCCTGCATT cg001 CTTTGCTTTCTTATCTCCAGCTCACACCTTTAAGTCTTATGTAGTTAAAGGACATT 4 68942 TATC[CG]CCTCCTTGGAGAACACAGCCCTCCAGTGTCTCCTGCAGCCTGGAGCC TGGGACATTCTGG cg001 TTATTGTAAACCCATTTTACCAGTGATGTGAATGAGCCGCAATGAAGGCTAAG 5 94146 GGACTTG[CG]CAAGGTGACATATATAAGCAACAGGCCTGCGATTGGAATCCAG GCCCCAGAGTCTGGGCA cg002 AGGGGGATGGAGCTTCTACACAGGGCCCCAGCGCTGTCGCTGTGGCTGCTGCT 6 30271 GCCGCTA[CG]GCTTAGTGCACCAGACGCTGCATTTCAGGTGCTCCTACAAAAG AGGCCACTCCTGGAACG cg002 AAGGTCCCGCGGCCTCGGGCCCCGCCCCGCCCCGGGGCCTCGAGCGCCAGGC 7 61781 CGGCCCGG[CG]AACCCCGCCCAAGGCCAACAAGGAGCCTTGTCCGCGCATTCC AGCGGCAGAAACGGAATG cg002 CCTCAGATGCACAGTGACACCCACCTTGGAGAGTTTCTGTGTCTCTTAAATGAC 8 97600 CGAATC[CG]TGTAGAAGGCTTATTACCACAATCTGTAGCTACTTGGTAAACGGC AGCTCTTATTTTGAC cg003 GCCAAACCAGTGGCTGTTTCTGAAATGTGAGCTTCCGCCCCAAGCTAAAAAGT 9 35286 GTTCACA[CG]TGGGTGGTCTGGAAAAGACCAAAGAGAGAGACCTGAGTTGAA TTTGCCAGGCGGGTAAAC cg003 CAGAACACCGAATAAATACCAGTTCTTACATGACATTTCACTCCACGGAAAAAT 10 38702 CTGGAG[CG]CACACTGCACCGCCGCCCGTGTGGCCTGCCCGCAACCCGGTGGC TCTGCCCGGCCCCGGC cg003 GAAGCAGTTCGATGCCTACCCCAAGACTTTGGAGGACTTCCGGGTCAAGACCT 11 50702 GCGGGGG[CG]CCACCGGTAGGCCGCAGCGGGGCCGGGGTCGCGTGGAGGG GGGCGTCCTAGAGCTTAGCC cg004 CTTGCACCTCTGGCTTTTGCAAACTGGGGGCCCAAGAGCTGCACCCAGGGATT 12 10898 TTATAGC[CG]TTCTTATCGGTCCTCAGGATCAAGGACCAATCAGGTCCCTCAAC TGGTCTGGTGAGCCAA cg004 TTGGGTGGGGCGTCTCAGCATTCCTCCAACGGGCAGGTCTCAGCGCTCCTCCCC 13 12772 CTGCTC[CG]CTCCTCTGCAGGGCCCAGGCGCCCTTGGCCTTAGGACCCAACTTC TCTTACCGCCATGGA cg004 TTTCTCTGGGAGGGGGCCTCTGCCCAGCTGTCCCCTGTGCGTCATGTGCAGGA 14 12805 GGCCAGG[CG]GCTCGCCTTACAGGGACCCGGCCACCTCTATATATAGCCCCTC GAAGACAGCTGCTCAGT cg004 CAGAGGAGACTCCTGGTCCCCTGTCCGGACCCCGCCCCGACCAGGTCCAGCCC 15 62994 CGCCCAA[CG]GCAAGTTAAGAGCCCCCCAGTGCCAGACGCTCCAGACAGACTG CCACTCTTGGGGGGCAA cg005 CTGGAGGCATCTTCGGACCTCTGGGCGGCCCAGCCCTGCCTGGCGTCTCCCCG 16 03840 CCGCTTG[CG]GCCTACCGCCAAGAAGCTATGCCTTAGGCAAACCATGGAGCTC TGGCCCCAGAGGGCGCC cg005 GGTGCCAGTGAAGGCCGGGTGCCTGGTCCCCCCAGGAGGCTGGTCTTGGAGC 17 15905 AGGTGGTC[CG]GTGCTGGTGGTGGAAGGACAGCAGCTTCTCTGCTAGTGGCC ACAGGCAGAGCCTGCCTTT cg005 AAAACATGCCCCAGCTTTCCCAAGATAACCAAGAGTGCCTCCAGAAACATTTCT 18 82628 CCAGGC[CG]TCTATATGGACACAGTTTCTGCCCCTGTTCAGGGCTCAGAGATAT AATACAGACATTCAC cg006 CTACAACTATGGCTTGTCTGAGTCCTGAGCCAGCAGAGCTCAGGCCACAGCAC 19 87674 CTGCACC[CG]TTTTCTGCTGCTGCACACAAGGGCTCTGTGCATTCCGCATCCAG GTGTGCCCCTCCTCTT cg007 TTCTCCAAGTAATTTTCATGTGCAGCCAGAATTGCAACTCACCAGGCTAAACTG 20 44433 CAGTTG[CG]CAATTCTGGTCTTCTTGATACCTGATTTCTTTGCCCCTTCTCTTTTC TGGTTCAATGCAT cg008 AATCCCCCTACCTTGATGTCTTCTCTTAGTAATCCCACTGATCCTCTCTGTTTTCT 21 45900 TTGC[CG]TATTCAGTGTTAAGCACAGTAAGTCTTTCCTACTGAAATAGCCATGG TCCTAATCATAAT cg008 ACTCAGTTCAAGGTTTATAAGAAGAGGAAATGTTTTGCCCTGGCCGCGTTTCCT 22 62290 TTTCCA[CG]TATTGTCTGTTAGAGTGCAAGCTGAAATAATGGGTTTTCTAGTTA ATGGCATGTTCCAAT cg009 GCCCGGATGCGTCCCTCTTTCTCCACCCCGCCGAGCCTAAACTAGTGACGGGG 23 43950 AGGGAGA[CG]GGATAGTGTTTCTGTTTCGTGGTCTTTGAATCCACAACCTCTAG TCTGAACACAGAGAAC cg009 CCCACTTTTCCAGATTGCTCTGAATGTCCTAGTGAGCTGCTCCCGTTGGGTAGG 24 55230 CTCCTG[CG]CCTCAACCGCGCTCGGTACTCGACGTTTATTATCAGGGAATTCTC GGCTGCAAGATGGGA cg010 AGAAGGAACTCTGAAGACTCCGTAGATTGCTCTAGACCGCCTCAGACACTCTC 25 56568 GGCGCAG[CG]TGGAGAGGATTTGTGCAAACATTTCCTCTGTGGACCAAGAGG AATGCAAGAGGAGGCTGC cg011 TCGCGGGTGATCTCCTGGCTCAGGGCCCGCATGCGGGAGTAGCAGGTCGGGG 26 14088 GAGTGGGC[CG]CGCGGCGGGGGCTCCCGCCAGGAGCAGCAGCAGCACGGGC AGAGGCCCAGGCGTCCTCAT cg011 TTGCCAGCTTAGTTGTAATTTCTTGTATCCATCTTGGTCCTCTTCAGTGCCCAGC 27 28603 CAGAG[CG]CTGGCAGACAGGCACTGGGTACGTTTTGTTGAATGAATTGGGAG CGAACGTCGTTTAGTG cg011 CTCCGTCGGCCCGGGCTCCTGCCTTGGGGGTGTCCCCTAGGTAGAGAATGCGT 28 31735 CGGGGAG[CG]CTTCCCGCCAGAGATGGGAAGCCCAGGAAGCCCCTCCCCATG CAAACAGTGCCCCCGCCT cg011 CGTGTATATTTTTAAACTGTGTGCTGACGACAGTTAAGTAAATGTGATTCAGAA 29 37065 CTTCTG[CG]TATTTTGCAGGACAGTTTTGACACAATGACATGACTCGCTAGCCA GGAAAGATAACGACA cg012 TTCTTAATAATGAATGAACCAACGACCCCCAAGGCTGGTTTGCCCGTGCACACG 30 11097 CACGCA[CG]TGTGCAACACGTAGCACTTGCTGAGTGTTTGCTACTTGCCAGGCC TCATGTCAAGCACTT cg012 GGCCAGGAGAGGGAGACTTGGCCCAAATAAAGTGACTCAGGCACCCTCAGGA 31 21637 ACTCTCGG[CG]CCCGGGGCCCCTTCGGGCAGCCTTCGACCCCCATGCGTCTTTC GGGTCCCCAGGGACGCG cg012 CACTTTTCCTCCCCAGTACGTGGGAGCCCTAGAGGACATGTTGCAGGCCCTGAA 32 52496 GGTCCA[CG]CGAGGTGAGTGCAGGCAGCCTCAGGGCTTTCACATCAGCACGT GGCTGTGCTACTGGACA cg012 GGCGAACCCACCCCTCCAGGCAGGGTTTCGCCCCTCGCCCCGCCCCTTCCCCCG 33 54459 CCCGGA[CG]GCCATGGCCATTCCCGGCATCCCCTATGAGAGACGGCTTCTCATC ATGGCGGACCCTAGA cg012 CAGTTTTAGTCCTTTACGGTGATTTGTAAGCCCAGGCCTTCTTAACTAGGCAAA 34 61503 TGCTGC[CG]CCAGGTGGCCTAGGCCTAACCCCAGAGCCGTTGTCTTGACGCTT AAGCTTCCGGGGAGGG cg013 ACGGGCAGGAATCTGTTGTAGAAGAGTTGCTGCCGGGACCTGCTGGTGAATT 35 35367 GGCTCCAC[CG]GATCCGGCTCCGCAGAAAGCTCACTGCTTCCTGTGGCTCCTG GATTTCCAAGCCTCTGGG cg014 AAGAAGCTAGGAGGGGAAATAAATTGAGTGGGGGTGGGGTTTCCCAAGAATC 36 00401 GGAGGAAC[CG]AGAACGAAGAGGGGTGGGGGAACGGGGAAAGAGAGAGGA AAATCAAGTTTTCTTCAGCAC cg014 TATGACACACCTATATTCACACAGTTGTGACTGTGGACACGCAAAATGCCTGAG 37 41777 GCCCTG[CG]TCCAATCCCGGAAGCACAGTTCCTGGGAGGAGTCACTTCTATAA TAGCCGTATCTTCCCT cg014 GGTGGTGGACTTTGGGACTGGACAGACCTGGTCACAGTCTAGGTTCTACATCT 38 50842 TACTGGT[CG]AGCAACTTTAGGCAAGTAGCTTAACTCCTCCGAACTTATTTTCCT TTTCTACCAAATAAT cg014 GCAAGTTTAAAAGTACTCACAAAATCTAATAGGCAATTCAACATAAAACTCCAT 39 59453 GGCTAT[CG]CTGTTCCTCACTTTCTGAACCTTTACCTGCCTGACTTTACTCCATA CCACTCCAACTCAC cg015 GTAGTTTTATTGTATCAGACTTAGTACAGGGGTGGGGTGGGGGTGTGTATTGG 40 11567 AATGATG[CG]TGCCCGTTTCTCTGCAAAATAGTTTCTATGTCATGGAAAGGAGT CGATGGGACAAGAAGA cg015 CAGCCCCGCGCCGCATCCTCCGGCCGCCCCCTCCCCGCTGCGAGCTTACGCCGC 41 19742 TGTCGC[CG]CCGCCACCGCCTTAAAAAGGACAAAACGGAACAGAAAATGAAT GCATGCACAAAAAAAAT cg016 ATGATAGGTGTGAGCCCCTGCGCTTTGCCAGGGCTGGTTTTTGGATGTGATTCT 42 23187 CAGGGC[CG]TCTTTCTTTACCCTTCTGCTCTGCTGAGGCCCACAGCAGCCTAGT CTCCTTGGGTGTGGG cg016 TGCTGGGTATCCGCGCCGGAACCGCGAGGGGGTTGGTTCAGGCCTAGGCGCG 43 26227 GGGCAGGA[CG]GGACCGGTGAGTGGCTCCTCCAAACAGCTATAGAGACCCAG AAATGCCTGTGGAAAGCTA cg016 CAGAACCTGCAGGAGCAGATCAATCCCCTCTTGGTAACACACCAGAGCCTGCG 44 51821 GATACCG[CG]ACTCCGAATCTAGTTCTACTGCCCGCTTTAGCACAGTGGCTGCA GCTGTGCTCTGCGGGT cg019 CTTCTAGTGGCAAATTTCTCCCTGCTGTGGCAGGAGGACGGCTCGGGGGAGCT 45 18706 CTGACCA[CG]ATTTCATGCAAAGATACGGTGAGACCCTCCGCTCAACAGTGGC TTTTCTAAGGCTCTCCT cg019 ACATGGGCTTCTCTTCGAGGAGGTAACATGTCCGCGCCCTGAGCCACGGCTCT 46 30621 CTGGGCG[CG]GCCATCTTGGTAGATCTGCCGTACAGAAGGGAAACAGTTGTTC TTGTGTCATTAAACCGG cg019 GCTTTTTTGGATTGTGTGAATGCTTCATTCGCCTCACAAACAACCACAGAACCA 47 46401 CAAGTG[CG]GTGCAAACTTTCTCCAGGAGGACAGCAAGAAGTCTCTGGTTTTT AAATGGTTAATCTCCG cg020 AGAGGCCTCGGTGATTTCCCGACCTCTCCTGTGAAGCCTGATTCGGAACTCTTC 48 16419 CAGCTG[CG]AAGAACTTGGCCGATTCTAAGGCACATCAGGGCTGCCTGGAACC CTAACACCTGCCTAGG cg020 TGCCTGATGGATAATCCATCACTTGCTTTTCTAGTATGAATGGTCTATTTACGGG 49 71305 TCCAG[CG]CCCCTGCTGGCTTACGACCTTTTCCAGGGCGGGGAGGGGCTGTCC TCATCTCTGTGACCC cg021 ACTGCGCCCAGCCCATTTTACAGACTTTTATTTTGTTCAGTTTCTTTATTGTCTTC 50 51301 CCAA[CG]TCCCCCCACACACACTGCACTAAAATGCAAACTTCACGAAGGCAAG GAGGAACTTTTGCC cg021 TGGGGAACGCGAGTGGGGACAGGGGGGCCTTCAGCTGGGCCCCAGGGAACC 51 54074 GCCCCGTGG[CG]CTCTCGGCCTCGCTCTCACTCACGGTGCTACAGGTGGTAAG CAAATTGACTATGTTGTGG cg021 CAGCCCCCCTCGGCGGCCGCACCGACACCGCACCCCAAGTCCTACCCCGGGGC 52 97293 CTGGCGG[CG]CTCCTCGCCGGGATGCCCTAGCTGTGCCGCAAGCTCCCCACGC CCCTCTGCGTCCTTTTT cg022 AGGAACCCATGGGAATGAGCTAACCGGAGTATTTCTGGTTAAGCATTGGCTAG 53 28185 AGAATGG[CG]CTGAGATTCAGAGAACAGGGCTGGAGGTAAAACCATTTATTA CTAACCCCAGAGCAGTGA cg022 GTGTGCAGAATTTATATATATAAATATATCTCCTCCAACCCCTCCCAATGAAGCA 54 29946 AGTCA[CG]TGAGTCAATCCTACCCTAAGATATTAGGGATTGAGCCTCCTGGGA CATTTGGTGGCTTAG cg023 GTGGGAGGTCCTTATGCTAGGAGACCTAATGTCTGTGCCTCAGTTTCTCTATCG 55 09431 GAGAGG[CG]ATGTCTCAAGAGGCCTTTCAGGGCTCAGAGTTGAGCTTTCTGAG TTCCACATGGAAGTGA cg024 GAACGACTCAGTCTCTCAAATCATAGCTAATTCTCCTCTGAGGGCCTTGCTGAA 56 80835 GTTCTG[CG]TTTGCTTGCTCCGCTTTCCTCTCATTTTGGACCTCCAGCCTTCCTGT AGTCCGAGGCCCT cg025 CCTCCGGTCTAGGGCTCTTTGTCTTTGCAAAGTGTCGAAACTGTCTGGCATAGT 57 03970 GGGCTC[CG]CCGGCGGAGGCTGGAGCCGAGGAAGCGAGGAGGCGGGATGA GGGTGGGAGAGGGCTCGGG cg026 TGCCCGAGGCAGAAGGATGTTTGACCTCCGGATAAGCGAGGCGCTGCTGTGC 58 31957 ATTCATTC[CG]GGCTGCATCGGTGGCGACAGCAGAGGCTCGGGCGGCGACTCT CCGGCCAGCGGCGGCGGT cg027 ACTGTTCAAAATGATGAACGAAGATGCAGCTCAGAAAAGCGACAGTGGAGAG 59 35486 AAGTTCAA[CG]GCAGTAGTCAGAGGAGAAAAAGACCCAAGAAGGTAAATCGC CGGAATTAGGAATGTCTGT cg028 TCCAGTTTTAATCTTTAAAAAGAAGAAGAAGCAGCAATGCATAAGCTGAGTGA 60 02055 TTCCCCG[CG]GAATCCAAAGCTAACAGAGCCAATAAGGCACCTTCGAGGGCAT CCCAGCCCAGCTACTGA cg029 CTCTTGCAGGAAGCCAGTTGAGGGAAGTTCTCCATGAATGTACGTCACAATGA 61 76574 TGATGAC[CG]ACCAAATCCCTCTGGAACTGCCACCATTGCTGAACGGAGAGGT AGCCATGATGCCCCACT cg030 GGTGACAGGGACCTAGGGCCTGGGCTGGGAGGAGGCGGGGCTAGTCCAGGA 62 07010 AGGGACCCG[CG]CCACCCAAGTGGCCCCTGCAGGGGCCTCCTGAGGCTCCTG GGTCCTTCCCCAGCTCCCAT cg031 TTCTTTCTCCTCCACTGCAAAGTTAAATGCGAGAAGGTAGAAACCCAGAGGCCA 63 12869 TGCTGG[CG]CTGAGAGATGAGCCCCACTCACCAGATTCAAGATCCCAAGGTAG GCACAGACACAGGGCA cg031 TGGAAGGTGTCAGCGTGTGGCTGTGTGATCTTGCATGTGTCTGTGTTCTGCAG 64 72991 GAACATG[CG]TCAGTGTGTGTGCATCAGTGTGCATCTCTATGTGTCATGCACTG GTGTGTCTTCGTGTAT cg032 AAAGTGTTGGGATTACAGGCGTGAGCCATTGCGCCTGGGCAGGTATTTTTTCT 65 58472 CATTAAG[CG]CTCCCCATCCAAGTCTGCCCTAGGCAGGAGTGCCTAGTGCACG GGTACATACATACCCCG cg033 AGGGCGTTTGCCACAGCCCCTTAACTCCTTCCAAAACACTCCGCTTAGATACTG 66 40261 ATAAGG[CG]CCAACTGCAGCCTGGAGAACCCCTATGCGCCATCTTGGCTTCCC GCAGGCCTCTGCGCCG cg033 CAGCCTCTTCCTGCTGTGTCACCATCTGCGGGAGGTGGTACTCTAGTCTCCCCT 67 87497 AAGACT[CG]GCTTGCCACCTGCACCAGCTCCCTGGGCAAAGGTCACCTGTGTTC TTAATAGAGCAGAGA cg035 ATGGAGTATGTATATGTTCAGCTTTACTAATGCCAAAATGTTTTCCAACATAGTT 68 35648 GTAAG[CG]ATTTGTGCCCTCGATAAGCAGGGTATGAGAATTTCCATTGTTCCAT GTCCTAGCTGACTC cg035 CAAATCTCTCTGCTTCCTTCGATGTTGCCTGTGGCAGAAATTTACATTATCCCTT 69 65081 CAGCC[CG]CTTAAAAAATTCTGTACTTCCCAAGCGGCTAAATTTTTAAAGTCCCT CAACCACAAAAAT cg036 AAGTAGAGAGGCAGCCGGGAGCCTGCCTTCTGTGTTCTCGGTGCAGGGGTATT 70 23878 CTGAGAA[CG]GCCCCTGCTCACACGGGTTTAAAAGGAACTCAGTGACCACAGA CGGATGAGAACAGCGGA cg037 TCCGCAGGGGTCTCCTGGGAGGAACCCACCAGCGATAGGAACACTGAAGCTG 71 03325 GGCTACGG[CG]TCCGCCCGAGCCTTTTCTTAAAGGCGCCGACCCCGGAAGCGG GGCGTCCGAGGGAGCGCG cg037 ACCTGCGCCCACAGGGCCTGGGGAAACCTTGAGTACGAATGCCACGCCGCGG 72 24882 CTTGTGGG[CG]ACACCACCGCTGTCACCATGCCCCAGGGCCACCTGGCAATGC TGCTCTTTTCCCGTGACG cg038 AAATTGATCAATACGAATGATCACGCCCCATGTGCATCTCCTCAGCAGCCACAA 73 19692 GAGAGA[CG]AGGTCACTGGAGGATAAACATCCGTGACTGCACCTCATGATCCA TCACGCACGACGGCCG cg039 TCTTCCTCCATGTCCAAGACACCCAGCTTAACAACCCTGTAGCCCCCAACTTGGC 74 29796 CCTAG[CG]GCACCTCGCCTCGACCTTGCCATTTTATACTCAATTGGGGCGTAGG GTTCTGAAGCCCAG cg039 CATCTCCACTTCTCCAGTCCGCCCTACTCTCCACCCGTGACCTCCAGTGGAGACC 75 77782 CCAGG[CG]GCAGCATCAGTATTTGATCGGCCCTTCGTCAGCACGCTGCCAGCC CTGGCCGGCTGGGTT cg039 AGTTGCCACAGGGTAAGCCCAGTGCCCTTTTGCCCAAGGTCAGGTCACTTGGT 76 91512 GCTGGGG[CG]TCACAGAGCCCAGGAAACTTGGGATCAGAACCCCCTGCTCCCC GCTCCCCACCTCATCCC cg040 CTGACCCTCACGCAGTGTCCGCCTCCAGGGAACTGTGGAACACGTCGCAGAGA 77 07936 GCTCAAG[CG]CCACGTTTGGATCCCTGAGCAGCTGTCACAAGCCTGCACCCAG GACTGGGGGGCCTGCTG cg040 GAGGGAGCAAAGGTCTCCGGTGTGGCAGGCAGGTTTTTCCAGGCAGCTGGCA 78 14889 GGTGTGCT[CG]CGCAGCTGACACTGCCTTGGGAGCACAGAAGGTGGCAGCAA AGATCATGCGGTCTTTTGA cg040 AGGGTGCCTGCCTCTCCCGGCCTGCGCCTGCGCGCTGGGGCCTTCGGCTGAAG 79 84157 GGGTGTG[CG]CTAGCGGAGCTCCGGGAAATGAATGAATGAATGAATGAATGA AATGCTGAAGCGGGCAGG cg040 TAAGGCATCTGCTGAGTGTATAACCATTTTACCTCTTGTTTTTAGCCCTCTTCTG 80 87608 GGTCA[CG]CTAGAATCAGATCTGCTCTCCAGCATCTTCTGTTTCCTGGCAAGTG TTTCCTGCTACTTT cg041 GACGCCGGCCCGAGGTGGCGCCGGAGCTGCTGGCAGAGGGGCGGCGGGCGG 81 69469 CGGCGGCGG[CG]GCTACAGGAGGGACTGACAAAGCCCCACGGCACGCCGCTC CCTACTTATAGCACCGGCGG cg043 CCCCGGTCCGCCTGGCCCCTCGCCCGCCCGCCAGGCCCGCCGAATGCGGCCTC 82 33463 CGCCCCG[CG]CGCCTAAAGGAGGAGCGTCGCGGGGGATGGAGGCGGCGCGC GGTGGGACCTGGGGAGATG cg043 CGAACTCCTCACCTCAAATGATCCGCCCACCTCAGCCTCCCAAAGTGCTGGGAT 83 59302 TATAGG[CG]TAAGCCACTGCACCTGACCAATACAGTCTTAATAGGGCTATTTGG ACCTCCTTGGAGACA cg044 GAGACCTCCTGCCAACCCAATTCCCAGTGCGCAGATGGGGAGGAAGAGGCAG 84 16752 CGAGGAGG[CG]CCCCCAGCTCAAGGTCACCCATCAGGTCTGGGGCAGAGAGA GCCAGAAGCCCGGAATTCC cg044 CACCCTACTGCATGTTGCAAAGTATTCCTTTAAAATGAAGTGAGTAAAATACTG 85 24621 GGATGA[CG]TTATCTGGAGCCCAAGAAAGATGGCTCATTTGGAAAGGCCTAAT ATCCCAAGTTGCTTAC cg044 GGCCGGGTGGGGGGAGGTGACTTGATGTCATCCTGAGCAGCTGGGCGGCGG 86 80914 GTGCCGGTG[CG]CACGGAGCCGAGCCGGGGCTCCCGTTGCGCTGCACCGCGT TGGGTCGGAGTCCCAGGACT cg045 GCAGCCCGGGAAGGGGCATTGGTGGCGCTTGGCAGCAGGTGTGACAGACCTC 87 28819 CTCCGGGG[CG]CCTGATCCGCGGCGGGGGCGGGGCCTGCCCCTAGGGCCCCT CCAGAGAACCCACCAGAGG cg046 CAAGGGTCTAGGGTCCTGGGTATCTCTAGGTACTGAGACAGCTGTGTGGTCTG 88 01137 CTGCATC[CG]TGCCCCTCTCTGAGCCTAGAGCCTGGGCTGGCCCAGGAAGCAG GAAGAAGTCTGCACCAG cg046 TCAGCTCGTGGGCTGCCAGCGTGCAACCTCTCACCTAGATAATGGTATATAATA 89 16566 TAAATA[CG]TTTCCCTTCCCCCCTTTTTTCTCTTCCTCCTCTTTCTCCTTTCCCTCCC ATTTTCCACAT cg047 GGTGGGTGGTCCGGCCCCGAGCCCTCCTGACTCTCTCGCCAATGCCCAGAGGC 90 18414 GCCGCAG[CG]ATTCCAGGGAGGCCGCGCTCTCGCCCCAAGGCAACCAGAAGC CCACGTGCCAGGAGAGGC cg047 GTTCTCATCCCATATGCCTTTGTCCAAAGGTTGCACGGGGGTTAAGCTTGGCCC 91 36140 AGAAGG[CG]CCGAGGGCTGGTCGAGTTCTCCCCTTTCCAAGAACCAGCCGAAT CTCCCTCCCGCAGATC cg047 TGATCGGGACGAGGAAGGGTCACTCCGTGACCCGGGATAGGGCCGGGATGCA 92 55031 GCCTTGGA[CG]GGGCTGGGCCCAAATGTGGGCTCTGGAGGGAGCCGGGCTG GGGCTGGTGCTGGTGCTCCC cg048 CAGCGGGAGATCAAGTGAGCCTCAAAACATTAGAAAAACCCAAGCCAGTCTGC 93 18845 AGAGCAC[CG]CAGCCGCCTCAGGGCCGGTTACCATAGCTACCCTTGGCTTCCC AGCCCAGCACATGTCTG cg048 CTCTGCGGGGACAGAGGTCTCAGGAAAGTAGCCTTTATTTATGTGGCACCGAT 94 36038 CGGAACC[CG]CGGCCGGCCAGGCGGACCTGGACGGAGCGTCCCTGCTCGGAA CCTGGCGCGGGGCGCCGC cg050 AGGGTAGGGAGAGCGGGAGGCTGCTGGCCTGAGGCTAAAGCTAGTCACTGAC 95 87948 CTCTATCA[CG]TGCTTGTTATATGTTAGGCATGATATGCCAGCTCCTTTTATTCG GCGTAGCAATCTCTGA cg050 TCCACAAAGTACTTTCCATCAGATACACTTTTCTGATGGAAACCAGGTGTGTGA 96 89968 TGGTTA[CG]GCCCCAGGTTAGCTCCAGAGCACATTCAACTGTGGGTAAACACA AATGTGCCCTGTGCCA cg051 TTAATGCCCCCCAGAATCAGCACCATGTCATCACAGGCTTGGGTCAAGGGGCG 97 25838 GGTCAGA[CG]CCAGTCACATCCGCTCACTGCCCACAGCCACCCCCCCACAGTG AGTCATCTGCCAGGGTG cg052 GGTGTCCTGCCTGGGGTATCCCCAGAGTTTGGCACACGGTGATAGCCAACATT 98 28408 CACTGAG[CG]CCAAAGGGCCAGGTGCTGCCACTCTCTCAAAATAAGCCTCTGC CACTTACTGAACAACTA cg052 CTGCAAGATCGTGGTGGTGGGAGACGCAGAGTGCGGCAAGACGGCGCTGCTG 99 70634 CAGGTGTT[CG]CCAAGGACGCCTATCCCGGGGTGAGGGACCTGCGTCTTGGG AGGGGGACGCTAAGGCTGC cg052 GATGTCTCCAGGCACCCCCGACCTGGGCTTGGCCCTCTGCTTGGGGCGGAGCT 100 94243 TCCAGGA[CG]TGCTGGGACCTAGGTCTGACCCCGCCCAAGGCAGAGTTGAACC CACTGTGAACTTTCAGG cg053 CTGAGCAAGTCTTTGATTCATGGATTCCCAGCAACTCTAGCTGGAACAACTTCT 101 16065 TTGGCT[CG]TATTCCTCTGGTATATGTGCTGAATTTAGAATTCAATCACTGGAC ACCAGGAAAGGCAAC cg054 CTTAGTTAACTCACCTGAAAAATGGGAACAATAATACAAGCCACAGTTATGAG 102 22352 AATTCAA[CG]AGATAATGCATGTACAGCACCTGGCACATGGTAAAACGCTCAA TAAGTGGTAGTTAGTAG cg054 GAGTCTGGTAAGTGTCGGATGGTAGAACCAGGGTTGGGACTCGGGACCTCCA 103 40289 ACAGCATA[CG]ATGTGGTGGGGGTGGGCAGCCTGGGTGGGGGTGGGCATTA CTCTGGGGCTGGATTCAGCT cg054 CTCTCACCCGCTGCCGGGCTGGATTGTCCTCCACTTGTGCTTATCTGGTCCTCGA 104 41133 TGCCG[CG]CTCCGACGTCTTATCTGAGGGAGCCTTCCGTTAATGAAGGCTCTAT AAACATCTGACAAA cg054 GCCAGGTCACCCTCTCACTCTGTGCCTCTTAGTTATCTTGCATGCTCTGGTCTTT 105 42902 GCATA[CG]CTGCTCCCTGCACCAGGAACCTCCATCCCCATCTTTGTCTGCTTGTC GAACTTCAGAAAT cg054 GGTCCTGCCCCTCACCCCTCTCGCGGGGGGTCGACCTGCTCGTGGATGGGGAC 106 73871 CCTGGCG[CG]CCTGGGCTCCCATCCGGGGGTTCCCCGACCCAGGTCCCGGTCA CCCCCAGCGCAGGGCCC cg054 GAGCCGCCGATTGGCTAGGAGCACTTGAGCAGCGGAAGCAGCTGGCTCGCGC 107 92270 GGGGACTG[CG]GTGAGGGGGCGAGCCGTGAAGATGGCGGCAGTGGTGGAG GTGGAGGTTGGAGGTGGTGCT cg055 GCATTACCCCTTGTGGGAGCCATATTTTTCTAGAAGGCATTTTGATCAAGACAG 108 01584 GCCTCC[CG]CGGTTATTGATCTTAGGGTCATTGAGAGTCCAAGAACTGGGGAG ATGAAGGCCACCCGGC cg055 TGGGGGGCGCTGGCTGCCTGCTGGCCCTGGGGTTGGATCACTTCTTTCAAATC 109 32892 AGGGAAG[CG]CCTCTTCATCCTCGACTGTCCAGTGCCGCCGAAGAAAAAGTGC CTGTGATCCGACCCCGG cg056 ACCCGGAAATGCACAAGCCTCTTGATGCATAAAAACAGCTGGGCTCCCTTGGA 110 97249 GACAGAG[CG]CCATGGGAAACCGGGTCTGCTGCGGAGGAAGCTGGTGAGTA GGCTGGAAGGGCAAAGGGG cg057 CCAAGTAAAAAAAGCCAGATTTGTGGCTCACTTCGTGGGGAAATGTGTCCAGC 111 59269 GCACCAA[CG]CAGGCGAGGGACTGGGGGAGGAGGGAAGTGCCCTCCTGCAG CACGCGAGGTTCCGGGACC cg058 CTCCGACCCTGCCGCCCCCATTCTCCGCTCCCCGCTCTGGGGCTGAGTGAGGCA 112 51163 GGATGG[CG]AGAGACCCCTGAGCCACCAAGTCCGCTTACCTCAGGCAGATCCC GACGGGGGCTCGGCGC cg058 AAAGAGACGGTTTGGGAATTGCTCTGAGGATGCTATGCAAGTCACTAATAAAG 113 98102 GAAGACA[CG]GACAGATGAACTTAAAAGAGAAGCTTTAGCTGCCAAAGATTG GGAAAGGGAAAGGACAAA cg061 GAGTTTTCCTCTCACACTTGACCCTGATTTTGTTTTGCAGAAGCGACAGGCTGT 114 34964 GGACAC[CG]TGAGTAAGAGTCCTGGCAAAGGGGTCTGTGACAGAGCCCTTTTT ACAGGCTTGCTTTCCC cg061 CTGACCTCACCACCCACCAGGGAGGTGGGTCTTATTCTGGGCATCGTGCCAAG 115 44905 TTCTTAG[CG]GGGCCCTCTAGAATCTCTAAAGCAAATCAGGCTGAAGAGGGGA AAACCAGCAGGGGGAGG cg061 ACTTTCCAGCTCTTCCGAAGTTCGTTCTTGCGCAAAGCCCAAAGGCTGGAAAAC 116 71242 CGTCCA[CG]ATGACCAGCATGACTCAGTCTCTGCGGGAGGTGATAAAGGCCAT GACCAAGGCTCGCAAT cg061 CTGTGGGTTCGGCACTAGGTCCTCCTCCCCGTGGCTTCCTAGTAGGCATGTGGT 117 89653 GGTGTA[CG]CCTGCTGGGCACCTAGCGAGAGGGGTCGTGAGTTGGGAGGGA GCCACGTTGGGGTGCCTG cg062 CCGCAGCCGAGCAGGAAGAGCGAGCCGGGGGATTGAGACTGTCCGATCCAAC 118 95856 CTAGGGCA[CG]AGCCTGGTATAAATCGCGGACTAACAGAGACTATCTGATGAA GAGACTAACGGAGAGAGA cg063 GGCTCTTTTGTGGCTAATCTAGCGAGGGACCTAGGGCTGGGGGTGGAGGAGC 119 27515 TGTCTTCA[CG]TGAAGCCCGGGTAGTGTCTGATGATAATAAAAAGTATTTGCAC CTTGATTTGCTGACTGG cg063 AAATTGCCTGAAATTTCAGAGTTGGACTTCATCACTTGTCTGTGAGCCGACGCA 120 63129 GGCAGG[CG]TATTCTATATCAACGACAGACTCTCCTCTGCCATTTCCTTTCCTGA ATCTAGTTAACATT cg064 GGAGAGCAAGTCAAGAAATACGGTGAAGGAGTCCTTCCCAAAGTTGTCTAGGT 121 93994 CCTTCCG[CG]CCGGTGCCTGGTCTTCGTCGTCAACACCATGGACAGCTCCCGGG AACCGACTCTGGGGCG cg065 TGTCTTTCGGTTCATAATTGCGATTGTTAGCGAAGTGGTCTCGAATTCCATTTCA 122 33629 CTCCC[CG]TTCGCCGCTCTCAGACTAAATTGCAAATATCCCCAAGTCTGTAGCA AAAAAAGTTTTCTC cg066 AGCGCCTGGGCGAGTGACATCTGGGCCGGACCAGCTGGTGCTGCGCGGCGCA 123 37774 GGTAAGGG[CG]TGCGCGGGCAGGGACAGGGGTAAGGGGTGCCGGGGCGCG GGGATACAGGGAGGCCTGCCC cg066 TTATTCTGGTATCAATAAAAAGGAACTGTTACTATAGTAACAGATATTCCACTT 124 38451 GGTGCA[CG]GCCACTTCCACGATGCGGAACATCATGTCCAAGCCACACGCTTG AGAGGCACAAATAAAT cg066 GAAGCAATTTGAGGGTGTTCCAGATCACACCAACAGCGGATGCTGCATCTGGG 125 90548 TAGTTCA[CG]TACCCGAACAAAAATTTTAAAAATTTGGTGTGGCCTTTGCCATC CATTCACTCCTCAAAA cg069 TGAGTCAGAGGCAGGTGCTGCAAGGTAGGGCCGAGGCGGGCAGGTGCCCTA 126 08778 ACTAGCTGG[CG]CCGAGGAGACCCGGGTGCGGTGGGCTCCACCGACTCTCTCT CCCGCAGTGTTCGAGCAAT cg069 AACCGGGACGGAGGCTGGCCCTGGGACAGCAGGCGGCTCCGAGAACGGGTCT 127 58034 GAGGTGGC[CG]CGCAGCCCGCGGGCCTGTCGGGCCCAGCCGAGGTCGGGCC GGGGGCGGTGGGGGAGCGCA cg069 CTCGCCTGGGTCTCTCTCGCCCCGTCGCCCCCATTCCCCCACCCTCGGAATGAG 128 75499 GAGGGG[CG]CCTGCTACCCCCGGCCAGGCAGGCAGTGTGTCCCTCGGATTCCT TCCAATTTCCTGATCC cg069 GTAAGACAGGAAATCAATCAGAGGCAGAGCGACGCCTCTGGCTCTGGTCTAGT 129 94793 GGTGCAG[CG]TCTCTAGCCCTCGCCCCGCCCACCGTCCCCGCGAGGCGTCCACT CGCCGAGCCCCGCCCT cg070 GTGGCGCAGGTGCAGGACTGTGGGAAGACAGGAGCGCCAGGGAATGTCTGG 130 38400 CCAGCAGCG[CG]CTGCCCTCAAGGGGCCTCCTTGAAGGCCCCTTGAAGAGGGC AACACAACTAATGACGATA cg070 CCCCAGCTCAGGGTCCGTGTACTTGGGGACCATTTCCTGCTCTGCTGTGGTCTA 131 73964 CTGGAC[CG]TCTGGCATCGCTGTGACCGCATGGGCCGTGCTCCATCAATATTGT TTTTTTGTGTGTGGG cg071 TACAGCCTTCCGGGAGCTGGACGGGGCCTCCCCAGCTTTGGGCAGCTTGGGAC 132 80649 AGTGGCC[CG]AGACTGTGGGAATCCGAAACCTCGCTTCTGGCTAGCCACAAGG TCTGGGCGCGCCCCAGG cg072 TCCCATTCACAGACAAACTGCTAAAAGCAAAACCAAAACTTTCCAAATAAGCCA 133 11259 GGCTTT[CG]TCAGTTCCTCAGAACTAGTTCTGGTTTGACTCACTCTCATGTTACG GCAAACCTTAAGCT cg072 AACGTGCGGTTGCCGTGACTAAACGCATTCATTCACCCTACAAGATTTAGGAAA 134 36943 ATGTAA[CG]TTGCAAGGGAAGCAAGGTCTCTGTGTAAACCTCGTAATCGCCAC CAAAAGTCGGTAGCTG cg072 CACATTTCCCGCACAAGTCCCCAAGCCTTGGACCCCCCTCATCAGGACCTCCGG 135 65300 CACAGG[CG]CCCGTTTCCCGCCACTGCCTTCCAGTGGTTTGGTCCCCGAGCAGG ACCCAAGGCGGGGCA cg074 GCCCCTCCCTCTCTGCCCTTTCATTAGCTTAATTACACCGTGCCTATGACAACAG 136 84827 AGCAA[CG]GAAACTGATACCTCGGGCCTCTGGGGCTTGAATTATTCAAACTCT GTAAAGCAGCACACA cg074 CGTGGGGCTGGCGGCGCGGATGCCCTGGGGCGCTGCAGACCCCGAGAGGCC 137 94518 GCTTGCCCG[CG]GGGACGTCAGCCGCTTTTGCTGTTAAAATCTGAAATGTTCAG CAAGTTAGAAACTTGAAA cg076 CCGGATGAGCAGTGACTTCAGGGCTTGGGCTACTCTGGCTTAACGGGACCAGT 138 54934 AGCAGAG[CG]CCGCCCGTCCTGCTTGCTGCTGGGTCCGGTTGCCGAGGCGGA AAAGTCGCAAGCTCCTTC cg078 TCGGTCAGGCGTGTGCAGACAGCGCCTGCAGGTCTGGGTGGGTGCTGATCTG 139 17698 AGTGTCTG[CG]CCTGGGCCATGTTTTTGAGCCTGGCACAGGGGTGCTTAGTGA ACACATGACCGCCTAGCG cg078 TAGTTCATCTGCTGGCCGGCTCTCAGTCCCCGTGGCGCCCCCTTTCCTCTTGTCC 140 50604 CAGAG[CG]CTCTCGACTCCACCATGCCAAGGGGATTCCTGGTGAAGCGAACTA AACGGACAGGCGGCT cg079 AGGGAAACCGAGGGCCAGGAAACAACTAGAATCCGACGGTATTTCCTAGCTCC 141 29310 CTGATGG[CG]CTTCCCATGCCCCCAACTAAATCATGAAATAACCCACTCACCTG TTTGCACCGGGCCTGC cg080 CCTTTAATCTTTTTGTTTTGGTTTGAATCTGCTCGGCGCAGACTGGCCAAGGATC 142 35942 CTCTC[CG]CCCTCCCCCTTCCTCCTGGCGCGGGAGAGGCACCGGATATCCCCAC CCTCCCCGAGCTCT cg080 TGTGCCTCAGGCTTATAATAGGGCCGGTGCTGCCTGCCGAAGCCGGCGGCTGA 143 67365 GAGGCAG[CG]AACTCATCTTTGCCAGTACAGGAGCTTGTGCCGTGGCCCACAG CCCACAGCCCACAGCCA cg080 CAGACCTGCCTTAAAAGCAGCTTGCCCGCCTTCTCTCCTCCCCTCCGGGCGGGC 144 74477 CCTGCA[CG]TGGCCCTGACAGCAGTAGGCCCCACCCCTGCTGGATCCAGTGAG CTCAGGTGGGGCTGGC cg081 AATGTGCTGGGTGCAGCTTTGGGTAATACATATGCCGAACCTTCTCTTTAAGGG 145 69325 TCCACG[CG]CAGCCTCGGGTGTGAATGAAGGAGAAGAGATCGTGTACCACAC ATGATGCTTACGGAGCA cg082 GCGCGGCAGTGGCCTCGCAGGGCGCTGGGTCCCTCTCCCCAGCTCTCCTCCCCC 146 12685 TGGCCC[CG]TCGCCCCGCCCTCGCCGGGCTGGGCTGCGGGGTCAGGGGCCGA GCGGAGAGGGGTGAGTA cg082 GTGAGTGAGGGGCTCAAGAAACTCTACAAGAGCAAGCTGCTGCCCTTGGAAG 147 51399 AGCATTAC[CG]CTTCCACGAGTTCCACTCGCCCGCCCTGGAGGATGCCGACTTC GACAACAAGCCCATGGT cg083 TCGGGGTCCCTTGGCCTGGAGACCCTTTGTCCAACCCGTCGCCCACCTCAAGAC 148 31960 CTGCCT[CG]ATGCTGCGCATACAGTAGGTATCCAATAAATGTTCCTGGGATAG AAGGCAAAGGCGCTGG cg084 AGCCAGCAGCAGTGCCATCATCCCGTGCCCACCCACACGCCCCATCCAGGGTG 149 24423 CCCGAGA[CG]AGCCCATCTCGGACTGCACGGCCTCCTGACTGATGGCAGCTCA AGGACACCCGGGTCCTT cg084 CCACTATGTTCAGTCTAGTGAGTCTGAGCAATTAACTCACATTTTGAATTTCAAG 150 75827 TCTCT[CG]CCTTAGGCAAAACACCACCACCTGATGCTCACCAGAGGGGCGTGA CGCGGCAGCTGGGCA cg084 TGGGCAGTGGCGGGGCACGCAGGCGGCGATCAGAGGCTGTCCCGTCCTCTCC 151 87374 GGGGGCCG[CG]GCTCATCCTGCCAGGCATCTCCGAGGAAAGTTTGCTCTCCGG AAAAGAAGAAACCCGCGC cg085 AAACATGGATCAAGAAACTGTAGGCAATGTTGTCCTGTTGGCCATCGTCACCCT 152 29529 CATCAG[CG]TGGTCCAGAATGGTAAGGAAAGCCCTTCACTCAGGGAAGAACA GAAGGGGAGATTTTCTT cg085 AGCGACAGAGCAACGTCGCACTGCATTCTTACCAAACACCCAGGTGAACGACG 153 86737 CATCCAA[CG]ATTTGGGAGCTCAGGACCCATGGTCCCTAAAAGGCAACAATTA AGACTCCCATTTAGACC cg085 GAAGAGAGGAGAGGTTTAGAGTCAAAGAGCCCCAAACATTAGTGAGAGTATA 154 87542 TGTATGAA[CG]TTTGGTCATCTTAGAACAGTGGTTGGCATCCACAGGAGACCA GCAGAATCACATGGGCGC cg086 GGGGATCCCCAGTTGCCAAAGGATGGAGGGCGGAGCTGGAGGACCTCAGGCT 155 54655 AGTGAGCA[CG]CCCTTGCCCAGGCCTGCAGTGGCTGCACTCGCCAGCTGGCCC ATGGCCCTGTCCGACTCC cg086 TCTTTTTGTGACTCTCAAGGAAAGTCGGTTTTCTGAGCTCTTACTGGCTTAGTAG 156 68790 CGTGG[CG]TTCAACGCAGAGCATTCTAGGTAATGTAGTTTTCATAGATCCCGA GGTGGGTGCCGGGGA cg086 GAGAAGGGAGGCAGCTGCGGCAAAGTTAGAGCAAGTACTGCAGCAGCCAGG 157 94544 TTGGGTCCG[CG]CCGTCGGGTTTCTGAGAAAAGGGAGGAAAGAGGCGGGGC CTGCACGGTGTGTCCCCGCCC cg088 TTCCTATCCCACTGATCGTTTTAGAGCCTGAACAGACAAAACATCCTGGTTACC 158 72493 AAGACT[CG]AAGAATGCATAAGCTGGGACCAGGCAAAACAAACAGATCACTG TGGGCTCACAGAGCAGG cg088 GGGCAACGCGGCCGGATCCTGGAGTTCCCCTCCGTGCTGTGGAATTGGGTCAG 159 96629 GCGTGTA[CG]GTCCTGACCCTAGGACACAGCTGCATGTCCTCACCTCGGTGTTC AAAGCTGCACCGGCCA cg088 GGGCGAGGCGTGAGAACGAGCATTTCTAAGTTCCCAGGTGATGCCCCTAGTGT 160 99632 TGGTCGG[CG]TCCACACTCTGAGGACAGTGACCTCTCTGCTCTGTCCCTCATGT CTTACTACTACTGTCT cg089 AATCATCAAGGCCATTTTCAAATCCCATTGGTCTAGCCGTCACATGGTGAGAAC 161 00043 CGAATG[CG]CGGATAATTACGGAGCTGATATTTCCCCCCCTCCCCTTCTTTTT CC TCCCTCCCCTCCAA cg090 ACCGCATACAGCACAACTCAAGTTTGCATCAGACTGGGAAGCGAACTTAAGCC 162 45681 AGCGGTG[CG]TGGCCCAGGAGTGGGAAAGGAAATGGATGCCTGAAGTGGAA GAGGTGGTGCAGAGGGGGC cg090 TTTTATCTGCCCTCGGTACGCTGATTTCCAAAACCCAGCCTCATATTCTATACTC 163 96950 CAAAG[CG]CACTGCCAGGTGGGCCAACTCCAGCCCCCACAATCCGATGCCAAG GCCACTTCTTGCCAC cg091 GTTTATAGTGGTCTGGCTTTTGGCCATGACAATGACACCTTGCCCTTTTAATTTG 164 96959 GGGCC[CG]TGCAAATATTCACTGAAAGCTGTCAAGAGGAAAACAGAATTGGTT ATTGAATCACTTGCT cg092 GCCCCCTGGCGGCCACAGCGCAAGCCCGGTCTCTCCTCCTGCTGGAAGGACAC 165 54939 CGGGGAC[CG]CACCTCCAGCTGTGGGAGTTCCGAGAGACCCCGCCCTGCCCGC TCCTCCCTGGAGGCCGC cg092 AAGTGCGGCCCTTGGGCCCGCAGCATTAGCCTCATCAGGGTGCTGGTTAAACA 166 94589 CACAAAT[CG]TCAGACCTCCACCCCAGACTTTCTGAATCAGAAACTCTGGGGGC ACAGCCCAGGAATCTT cg093 CAGGGAAACGCGGGAAGCAGGGGCGGGGCCTCTGGTGGCGGTCGGGAACTC 167 04040 GGTGGGAGG[CG]GCAACATTGTTTCAAGTTGGCCAAATTGACAAGAGCGAGA GGTATACTGCGTTCCATCCC cg093 ATTTCCATGATAAAGTATCGTTTCCCTGGTAACAATAGCATTGGTCTTGAGAAG 168 22949 CTTCTC[CG]ATTGCAGCAGGACCTTTAAGCTGAGAACTGAAAAACGAATGGGA AGTGTTATGAGCAGAA cg094 TCCTCGGGAGACAGGGTCTCCAGCAGGCTGTCGATGTCGGGGTCTTCACTCAC 169 04633 CTGCCGG[CG]ATATTTGGCTACTCTAGACATCTTGGCAAAATGGGCTGTGGCT GCCAGGGGCTATCAGAG cg094 CGGGATGGGGGAGCCCAGCAGTGCCCACTGCACGCCTGGTGACGAGTCTCCC 170 13557 CTCATCTG[CG]CAGCTCAGTTTGCTCAGTTTGCTCTTCGTGACACGTGACTCGG CAAGGGGAGCAGGAGGA cg094 AAAAAAAAGAAAAGAAAATACTTGATGGAAGGCTGCCATCACCATGCTGCAAA 171 34995 ATCTCCA[CG]CCCCTGCTGCCCGCACCTGTCCTTCCTCCCTCCCTCCTCCCCTGG CCTGGGGAAGCCCCT cg094 GAGGGAACACATATAGAAGGGATTAAGGGGTAGTTGATGACTCTTTGGGAAA 172 80837 AGAGGGTA[CG]GGAGAAGCAAGGGGAAGAAAGACATCTATTTGTCAAAGAG CAAAGGCAAGGCAAAGCTGG cg095 GAGCCGCTCGCTCCCGACACGGCTCACGATGCGCGGCGAGCAGGGCGCGGCG 173 48179 GGGGCCCG[CG]TGCTCCAGTTCACTAACTGCCGGATCCTGCGCGGAGGGAAA CTGCTCAGGTGGGCGCGGG cg095 GGAAGCCCGGAGCCGCCCCTCCCCGCTCCCCCGCCCCGCCGCCCCGGACGGAC 174 56292 GGGCGCG[CG]GAGCCAACCCCGCTGCCGCTGGCTGTCCAAATCCCACCAGAGC CAATGGGAGCGCGAGGG cg096 GGAACGGTTCCGGCAGGGTTGGGTTTCCAGAGCTGTCCAGGGGCGCCTGGTG 175 30437 CTGAATCC[CG]CTTGGAAAGAGGCTTGGAGGTGGATGGGAAGGGATTTCCAA CGGAGGCGGCTCCTCTCTC cg097 CGCCTCTCTGGACCTCTTTTT1CATCTGTAGCTTGGGGATAACACTGACTAACAT 176 99873 GGCCA[CG]CTGAGCACTGCAAATCTAGCCTGATTGCCAGTCAGAATGCACGCC CGGCCTCGCTGTTTC cg098 CCCCAGAGAGCTTTCATCTAGAAGGTTTGACTCTGGCCAGACAACCAGCGAGC 177 09672 ATCTTCT[CG]CAATCTGTTGCTTCTTCCATGGCAAACTCCAGAGAATTAAGAAG CCAAACTCAACATCGC cg098 CCAACGGGTGAAGAGCCTAGGTGIIII1GATCTGTGCCTTCTCTGTTCCTCAGA 178 51465 GATATG[CG]GGCGTCCTTCTAGAAGCCCATCTCGCTCACCTGTGTGGTCACCCT TGTCCCGCCCTTCCT cg098 TCGCCGCCTTCTCGCTCATGGCCATCGCCATCGGCACCGACTACTGGCTGTACT 179 92203 CCAGCG[CG]CACATCTGCAACGGCACCAACCTGACCATGGACGACGGGCCCCC GCCCCGCCGCGCCCGC cg100 CTGTTGACCCGCAGGACTCGCTGGATGTTGAGGTCGTCAGCACCTTCTGCGGG 180 52840 GGTCAGG[CG]TCCGGGCCCGCTGCCCACAAACACGGGATAGTGGTTCAGGTCT GAGTGAGGGGGTGGAGA cg101 GGCGGCGGCGCCAGGACATGGAGCTCGAGAACATCGTGGCCAACTCGCTGCT 181 58181 GCTGAAAG[CG]CGTCAAGGTGGGTGCGCGGCAGGCGCCCCCGACCCCCCCCC CAGAGAACCCCGAATCCCG cg102 TCGCCCCCAGCCCACTTCACTCCATCACTGTCTTCCTTAGAGTTTATCCAGAAGG 182 02457 CAAGA[CG]TGGTATCCAAGCTCAGAACCAAGAGCCCACAGCATGGTGTGAGCT CTTTCTGCCTCTTGC cg102 GTGATGTTTAGAACCTTTTGGGGGATTCCTTCTCTCTCAGAATTTAACCTGGCA 183 25525 AGAGAA[CG]ACTGAGTTCTAGGAATTTTCTTGTCTGGAGAGAGTAAAATAAAT GTATTTTTTAAAAGCT cg105 CTCGCTGCTTCTCCCCTAGTCTTCGGGTCCCTTGAACGCAGGTCGCTTGTTTGCC 184 23019 TTACG[CG]TAGTCAGCGGCCAGTGGCTATTTATGGCAGTAAGGAATATTATCC ACATTTCACATGGAG cg105 TAAGCTGTCCAGACCTGGCTTGAAAACCCATCCCATGGCAAGGCAGGGATTCG 185 70177 CTGGCCG[CG]GTTGGCTCTATCTTGATCTGAGCAAGCCGCTGGACGTCCCTAG TTATCTTCTTCCTATCC cg105 CTCTCTGCAGCCCAGGAACAATAAATACTTCCTCCCCATGTTTAAAAATAACCCC 186 91174 ATGAC[CG]CTTTTGGCAGTCATAGGTGAGGCGGGCACCACCTAAGGCCCCCCC ACCCCATGCCGTTCT cg106 GAGAATCTGAAAATGAGACCCAAGCGAAAGTATAGACATTTTATTGTGGAGCA 187 36246 AAACCAA[CG]ACACCCTCAAGGGAGGAGTGCAGGCACTCAAAGATTTGAGTC ACAGGCAATGTGGTTCAC cg106 CTCAACAAGGCCTGCATCTCCGGACTGGAGCTCAAGTATAGCCCAGCGAGTGT 188 54016 CAAGAAA[CG]AAATTCTCCAAGGGTGGCGGAATCAAGCCCCAAGTCCCATGTG TCACTGGACCGGTGAGG cg106 TAGCCACCTCCTAGCACCTCAGGTTTTTTACCTTTGAGTCTATGAAGCCTGCGG 189 67970 AGGTCA[CG]CCCTAGGGAAAGAAGGAGCCCACTGGGTGTCAGGTCCTGCCTCT AGGGAGGGGACCGCGG cg106 GAGAAGGGCGGTGGAGTGGGACTTCCCGCTGGCCTAGAAAACTTCAGCTAGG 190 69058 GCTGGGGG[CG]GTGGCTCCTGCCTGTAATCTCAGCACTTTGGGAGGCTGAGG CTGGAGGATCGCTTAAGGC cg107 ATATAGTCCTATTGGAACCCAGATAAGCTTAGTCTCAAAGCCTCCCCTCTTGTCA 191 95646 CCACC[CG]ACTCTGCCTTACTCTTGGTAGAACCACAGCGATGACAGCTGCTTGG GAACATAACCACAA cg108 GGCTTTTCCCTTTGACCTTAACACTTTTGGGGTTATCTCTGAGGCGAATGCTAAA 192 78896 GGAGA[CG]CTCCAGGACTCGACCTCTGAAGGTCCTTGGAGCCAATTCCGTAAT ATGATCATGGAAACT cg109 AGAGACTGTGTCCACCGTCATTGAAAGGGTAATGCTTGAGAAAGGCCTGAAG 193 00550 GATATGGG[CG]GACAGAGTGTGTGTCTAGGGCAATAAAAAGTAACTGCTCCA GATGTTGAAGAAAATAATG cg109 AAGAGGGCCCCTCCAGGCCAGTCTGGGCACCCTGGGATAGCGGCTGCAGGTA 194 17602 GGCAGAGG[CG]CTGCCAGTGCCCAGGTGGCCTTTCCCTCCATCCGGCCCTTCCC ACCTTCCTATAACCTTC cg109 GAGGCAGCAGTAGAAACAGTTTGCTCCAAGGACCAAACTTATTCTGGTGTGCA 195 22280 GCTCACT[CG]CCCCTACTCATCTCCAGTGTATTTCAAGAGTATGCAGGGAAGGA AAAAGTCAGGCTGAGT cg111 AGCGGACGCCTGGGCCAGGCCTCACAACGTCCAGAGCTGGAATGGGTCTTTTG 196 77450 CTTTCGG[CG]CAGGGGTGACGGGATCAGCGGAGGGTAGGGGTGTACACTAGC TGCGGTCTGATTTAGCCC cg112 AGGGCTGTCGCGCCTGCCGTGTGGTCCTGGAGAATGAGGCTTACCAAAGGCTC 197 33384 AAGACAG[CG]TCCCCATGGAGTGACATGGTTAAAGTGTTGAAAGAAAAGAAC TGTTGGCATTGAATTCTG cg112 GGTTCGCTGACGCTCAGTGTTTTGGCCCGGACGGTCACATGTTTCCTTTGTTGT 198 37115 GAGCTG[CG]GCAGAGACTGGTGGCTGGAGGAGACGCCGGCGCTGGAGAGTG CGCTGCGCCGCCCGCCGC cg114 CCAGGGAAGCGAAGCCCAGCTGTTCCTTCGGGGTGTGTACTTGGAACTGCATC 199 26590 CAGGTCT[CG]CTTAGGGTCCCCGCGGCGAGGCGGAGCAGCTAATTTGAGAGC ACAACAAATAAACAAGGA cg114 TGGGGTTGGAGCTGGGCTGTGGCACTGGACTGCGTTCGGGGACGGGGGACG 200 59714 CAGCCAGAA[CG]CGAGGGTGGTAGGGAAATATTGGGGGTTTCGCGTGCACCG AAGGGAATGGGAGGAGAAGA cg114 CGGATCGCGGGGAAGTTCCTCTCAGCGCCTCAGGTGTCTGGGCGTGTGCAGCT 201 87705 GTGTTGG[CG]CACACTTGCCGCTACAGCCCTTCTGTCAGCCCTTTAGCTTCGAT GGGGCGCTGGTGGCCG cg114 TAAAGAAATGACAGGTGTTAAATTTAGGATGGCCATCGCTTGTATGCCGGGAG 202 90446 AAGCACA[CG]CTGGGCCCAATTTATATAGGGGCTTTCGTCCTCAGCTCGAGCA GCCTCAGAACCCCGACA cg116 CATAAAAGAGGAGACATAGGGGGCTTGGTGAGATACCCTGAAACCTCCCCCCT 203 00161 CTGACCC[CG]CAGCCAGGCCCCAGGCTGGCCGGGAGTGGCCCCTCACACTGGT TCTCCCCACTTTCTCTG cg116 CCTCGCGCTGATCTTGGTGGGCCACGTGAACCTGCTGCTGGGGGCCGTGCTGC 204 18577 ATGGCAC[CG]TCCTGCGGCACGTGGCCAATCCCCGCGGCGCTGTCACGCCGGA GTACACCGTAGCCAATG cg116 GAGTGGGTGGGTGGGTCTGGAGAAGCTATGTGTACCAACCAGGTTCACATATT 205 31518 TTTCTTC[CG]TGAAGCTCTGTCTCCACCCTCTCTGGAGCTTCTGCCTGCCTTATTT ACACCCCACTCTCC cg118 GGGGGAAAGTAAGGGAGAGAGAAAGAGACGGAGAAAAACAGGAAAACTTAC 206 33861 TCTTCAGTA[CG]CAGGGAAGAATAGAGAAAGAAAAACACAAAGAAACGCCAC GCAGACTGCAGAGAAGGACC cg118 TCGTCGGGGAGTGAAAGCAGGCGCAGGGAAATAAAAAGAAGGAAAGGGAGA 207 96923 CAGACCAGG[CG]CCTAACAGATGGGGACCAAGAAACAAGAGATAGCTGAGAG GTGCAAACAGAAGAGAAAAA cg119 GCCAGCCCAACTGTTGTATTTTCAGTTCTTCCAGTGTGAATCAGTTAATATTCTC 208 03057 GGGAA[CG]AGGGAGAGGTTGATCCTATGAGGAAATCAACCACAGTGAAAAGG CTTGGGCCGCTTTTGT cg121 TGGCGGTGGGCTACCCTTTTGTTCCTCTTTTACCACCTGGGTTACGTTTGTGGGC 209 45907 AGATC[CG]CTACCCGGTCCCAGAGGAGTCACAGGAAGGGACTTTTGTAGGGA ATGTCGCTCAAGATTT cg121 CCTTGCTGGCTCTGTCTGCTGAGGTTTTACCCAAGTGACTCCATTTTGAATCTTA 210 77001 CAACT[CG]CACACTACTCATGTGGAAGATTTAAATGTACATTCCAGGACCTGGT GCTTTCTCTTCCGC cg121 GTGGCCACAGAATCCCCTTCCTACAACTGGCAGGGGTCGGCATGGGCTGGAGC 211 88560 TCAGAGA[CG]GCCAGCTAGGACTTCAGGACACACAGCAAACTAGCTGCGCCCC GCTGAGGGTCAGCGCAC cg122 CTGACCTCCAGGAAGCTGAGCGTGGTGGATGGAACTCTACGATCTCTTTCTCTC 212 38343 CAAGGA[CG]GAAACCTCATCCAAGCAGTCCCAGAGGAAACGGATAAAGGTAT TTGAAAGGGAGCGAGCG cg122 GCCCTGGCAGTGCTCTCGCGGTGGCCTGGCTCTCTCTCTCCGGCCTGAAGGAG 213 47247 AGCAAAG[CG]CCCCAGCTGCCTAGGGCCACCGCTCCTGACGAATCCGCCAGCC ACTGCACGACAGATGGT cg122 TATCAACAAAAATACCCACTTCAGGAGGTGGTTGTAAAGATTATACAAGAGAC 214 61786 TGCAGAG[CG]TTAGGCAGCACCTGGCACAAGACAAATGCTCAGTAAAAGACC ACTGCTGTCATTAAGGTC cg122 CTGTCACAATTGTTAACACCTTCTTTGACCAGCCTTTTTACATTTGACAATTCTCT 215 65604 TCAG[CG]CCTCTTTCCTGCCAGCAGGAAGGTTTTGCTGCCTTGGCTTTCGGGAG CCCCCTAGACAGC cg122 CACGACTCACGGACATGGCCCCAGCTAATTGGTAGCCCCTGGGTTCAACCGGA 216 69343 ATCAGCG[CG]TGAGTCCAAGACTGGGAGAAAGAGGCTCATCCGAGACTACAA TTCCCAGAATGCGCTTCA cg122 GTAAACAAGCAAACAAAAACACATACACAAACCGGTCACTGTCAGACTGTCTG 217 89045 TGAGAAG[CG]CTCCACAGGACACAGCTGGAGAATGTGTCACAAAGGAACTCA GAGGGGGGCGGTCAGGGA cg123 CAAGAACCTGGACACCTTCTACCGGTAACAATGGGGGTGTGGCTTGCTTCTTTG 218 24144 GTGCTC[CG]CTGCTCAAACCTCTAGGGGGAGCATGCAGACGGGCAGGTTGTG GGGCACGTGGGCTCCGA cg123 TGGCGATCCAGGAGCACCAGTACAGGTCGGTGACGGCGATGAGGTACAGGTC 219 73771 CAGCAGGC[CG]CCCTGCGCCAGCAGCAGCACCACGGACAGCGCCTGGTAGCC CCAGCGGCACCTGGGACTG cg124 GGAGGGATAATGGGATCAGGAGGCTCAGAAAAGGGCAAAGAATGGGAAGGG 220 02251 GCATGGAAA[CG]GGTCTTGAAACAGTTAAAAAGAGAAGATAATCACCGTCAG CGTCGAAATGGAGCCAGATC cg124 GCCTAACCCGGCCTCCGAGGGGTGTCCCAGCGGGGCCTGGGGTCCAGGGCAG 221 73775 AGTTCTTC[CG]CCCCAGCCATTGGGAATGAAGGCCTCAGTGATGTTATCTGTAA AGCCGGAGGAATGGCAT cg127 GAGGGGGATTTCCAGCTGCTGGCCGGGGCCTCTCACCCCTACCCCCGCGTAGT 222 43894 TCATCTG[CG]ACGCAACGCCTTGTGTCAAAGCCCAGCACAGGTTCTGCCGCCTC TGACCTCTCTGAGGGT cg128 GGTGACGGTTACAGGCGAGTCCTCTCTTTGACATACTCAATTAAGCTCTGTACA 223 13792 CTTGAG[CG]TCTGTCCACTCGTAGGTGTGCATACTTCCACTGCGGATTTAAACT TTCAAAGAAGTCTAG cg128 ACTCAGACAGGCAGGAAGCTGAAGGCAAAGGAACTCTCTATCTGATTGGTTTC 224 64235 CATTCAG[CG]TTTCTGATTAATAAGAGACGTCCCTCAAATAGGAAGATATTGCC GCTGATGGCGCTGCAG cg129 ATTCACATTTAGTTCGCCTAGGAAAACTAGCAGTTAGTGAAAAACTGGCCACAT 225 85418 CACAGC[CG]CACAGCTCCAGCAGCCCGGGTAGCTTCCCCACCCTCACTTTCTCC AGCCCCGCCTCCAGG cg129 GGCATGCCTGCACCCTCAGGGCAGCCCCGGACATCGGCGTCAGGTTGCTTGAG 226 91365 TCAGGGG[CG]TGGGAATCAGACAGACCCGGTCTCAGATGCCACCCTGTACTGT TGGTTCTGTCATTTATG cg130 GACTGGGCAAAAATTAACCAGGGCTCCAACAGGCGAAGGTCACTGGACTGGG 227 42288 CAGGGGCA[CG]CTCCGCCTGGGGAGAGGAGATCCAGGAACGGTGTGTGGAG CTGGGCTCGGGGGGTGCCTG cg131 ATGGGGGTTGTGGCTGTGGAGCGGAAGTGGGTCTCAACCACTATAAATCCTCT 228 19609 CTGTGCC[CG]TCCGGAGCTGGTGAGGACAGCCTGCCAGAGTCTGGTAAGAAA GGGACTCAGGGTGCGGGG cg131 GACTCAGCCACTGGTGTAAGTCAGGCGGGAGGTGGCGCCCAATAAGCTCAAG 229 20519 AGAGGAGG[CG]GGTTCTGGAAAAAGGCCAATAGCCTGTGAAGGCGAGTCTAG CAGCAACCAATAGCTATGA cg132 GGTGGCCGTCCGCGTGGCAGGGCGGGGGTCCCAGGGCGGCTGTGCTTGGTGC 230 18906 TGGGAGGC[CG]CCCGAGGGCAGCGCCGGCCCCGAGTCAGCAGCCGCAGGGC ACCCTGGAGATGCGGAACGC cg132 AGACCCTACGTAGGATTGCATCTTTACGTCGTAGGCTTGGTCTCGTGTATTTTTA 231 58700 TTGAG[CG]TGTTTAATTAGCTGAGGTTACTCGCTTTGGCACCCCAGTGATCGTT TTTGCCACCAAGCT cg132 CTCTCCCAGCCGTTTCCCAGCGTGTCATGTGCTGAGAAATGGTGGGCTTAGCCA 232 96371 CGCAAA[CG]TTTACTGAGCATCTACTATTTGGTAGGAGCTGTTAGGCACCATGC TAGCAGTGGAGATAA cg133 GGGGACCAGTTTCCCCTCCTGGGATATTTGGTGTGCGACATGCCCTTCCCCCAG 233 07384 CCCCAG[CG]CCCGTTCCCTTTGGAAGCCTGGGTGCTCCTCAGACCACTTGGGG ACTCCCTGCTTCACCT cg133 CTGTCTTACCTGCAGCAGCCTCAGTTATGTTTTTGACAACTATAGCAACCAACTA 234 23474 CCTCT[CG]CGAGAACTTACTTTTGGCCATCGCACGAGCAAGTTTATTCCAAGAC TCGCGATAACCCTC cg133 CAAAGTCACTCAGCTCGCCAGGGGCAGAGCCAGGGTGCTCACAGGGTGGCCA 235 51161 ACCTTCCA[CG]TCTGCCCTGGACACGGGACTTTCAGTACTAAAATGTGCGGAC GTCCTTCTCCCGGACGTC cg134 TTTTCCCGGGCAGCTTACCTGCTCGGCCTGGGTCTTTCTGGACAGCAGGCGCTG 236 09216 GAGGTG[CG]CGTCACTGTCCGCCGCCGTGTCCGCGGCTGCGCCAGACAGTGTA GAACCTGCGGCCTCGA cg134 AGAGGCTAAATGCCAGGGGGATGGAGTGAGCTACGAGGAAACCACTATTCCC 237 49372 CGACCCAG[CG]CCTACCACAATCTGTTTGGATTACCACTGATTAGTCGTCGAGA TGCTGAGGTGGTACTGA cg134 ATCTCTCACCTTGCTACTTTCTCGGTAGCCGTTTCTGTTGTCCCTGGATTGGGGG 238 60409 CTCGG[CG]TTCGCTGTCCCTGGGCACCAACCCTTTTAAAGACAGTAACGTTGTA GGAAATCAAATTAG cg135 CTGTCTCTCCACCCTGTCCACCAATCAGCACCTGGAGGTGGGCTGGGAGCTGC 239 09147 CTGTGAC[CG]CTTCAGCATCTTTTGGGAGTGGTGACAGAGCCACAGAGGGCTG TGAGCTTGCCCGGCCCC cg135 CGGTCCGGGTTCGCTTGCCTCGTCAGCGTCCGCGTTTTTCCCGGCCCCCCCCAA 240 10262 CCCCCC[CG]GACAGGACCCCCTTGAGCTTGTCCCTCAGCTGCCACCATGAGCG GTAAGGATGAGTCCAC cg135 CGGGCAGCCGCGGGAAGCTGGTGATGCTCATGTAGTCCACTGGCGAGTAGGC 241 14050 GCCCAGGG[CG]CTCTCCTGGCTGGCCTCGTTCTCCGCCGCCATCCTCGCCCGCG CCCCCCAGCAGCGCAGC cg135 CCAGATTACAGTCTCTAAGTCTTAAAGAGGCCAGCCCCACTTAGAGGTTTTCCT 242 50877 GAGCTG[CG]TATCAGGACATGAGTTCCTTCCACTATTTCTAGGAGTACTACACT AGAGCAGTATGAGAC cg135 TAGGGACTGTTCATCCATTGGTGTTTGTGTGCAAACTAAGACGACTCTGTTCTG 243 64075 CGCAGG[CG]TGTTGGGGGTGCTCCCCCTTCCTCTCCATAACACAGACGCCTCCC GCGCAGGCGTATTGC cg135 ATTTCCATATATCCTTTATCCAGATTCCCTAAATTATTACTGCATTTGCTTTATCC 244 71802 TTCT[CG]ATCAGTGGACAGATAGATGATATAGACAGATAGATAGACAAATATA TATTTTTTGAACTC cg135 ACCTGCCTGGGTGCAGGACCCCAGAGGGACCCCAGGCCACCCCTGGCCTGCCC 245 87552 ATGCCCA[CG]GGAATCCCGACCTTGGGCTGCCTGTCTATTGCACCAGAACCGTC CCAGGGCTGACTCAGA cg136 GACAAAGTGCAGGGGATATAGACCAACCGCTTGTGAAGGCTGCTGGTTCTGTT 246 13532 AGAAGCC[CG]CTTTCGATTGTCAGTGGCTTTGAGGCAAAGGATTTTGGAAGGG AAAGCAAAGTGATTGTC cg136 GGACGTTGGACGTCAGCAAGGCCTGGGTGGTGCTGGTGAACGGTGATGCTTG 247 31913 CGGCCACA[CG]CGGGGTGGCTAAGCCAGGGACCCGAACTCATATGAGGTCTG GAAGGTGTGTTGAGACACT cg136 AGGCGGTGAGGGGCTTCCGGTTGGGGTGGCAGGGTGGTGGATCTGTCGGTCC 248 54195 CGTTTTCC[CG]TCGCACGTGGTGGCCACTGTTGGCTTCTGAATGGTTTGCAAGG CGGATATCCACGCCAAG cg136 AGTCCAGAAAGGCCCAGCCTGAATCACTGTGAGGTTGCCAGGGGCTTGGTTTC 249 56062 AGTTACT[CG]GAAACCACCCATCCTCCAGGCCAGCACCCAGGAGCTGCGTGGG CCTTGGGCAGTGCCCCT cg136 CCCATCCGGGATTGAGGAGCATCCCAATTCTGGGACCATCTCGGGGTCCCTGA 250 56360 CCCGGGG[CG]AATGGCTCTCCCATCTTGGGACCCCCATGCAGGGCTGCAGACC CCCAGGCGCCCCCACCC cg137 GAGCGAATCCTCTTCGGGCTTTCCAGAGTGCGGGGGATAGATAAAGAGTAGCT 251 00897 GGGGAGA[CG]CCCCCTGACCTTGCTGGGTCCCAGAACCCGGCTGCTCACCCCC AAGGGGTCCTCTCCAGC cg137 GCCACTACAGCACTGGTGCCCAAACCTGGCACACTAGGAACAAAGTCCTTGTT 252 18960 ACTTCTT[CG]TGGGCGTTTTCACCAAGTAGACTTGGAGGTTAACAAAGGACGC AAAGGAGAGGTTCTAAT cg138 TTTTCACAGGAGTGAGGCAGAAGACAGAAACTGCAACAAACCGCCGGGGGGT 253 43773 GGGATTAA[CG]TCCAAAGCTCACACCGGCTTCAACTGATTGGCAGGAACGAAG TGGGTGGAGCCTCCTGAC cg138 AATAATAAATAATAATGAATCCATTCTTCCTTCGGTCGTGGGTCTGGCAGGCAT 254 54874 AAATTC[CG]GCCGGGATTCCGACCCCAGGGCCAGAGCAGGACTCGCCTTGGC GTCTATGAGTGGGCGGG cg138 CTTGGGGGGCCAGGGGCAGGGCCTGTGGGGCGGGGCGGGCCTGGCTTGTTG 255 61644 GGCCTGTGC[CG]GGTGTCCGGGAGGGGCCAGACGGGGTCTTGGAGGGGCGG GGCCGGGGCCTGTGGGGCGGG cg138 GGGCTGAAGAGACCCCCCCCCAACACACCAGCCCCGAAAACCGTCTGCCGTCC 256 99108 CCTATAG[CG]CTGCATGGAAAAGAACCAAGACAAGGACTTGGAGTGGAGAAG ACAGAAATTGTCCACTGA cg139 CCATTTGAGGGCAAGGGCTGTGTCTTTGGGTACTTCGCTCCTCGCAGTCACAAG 257 75369 TACTGG[CG]TGCGTACGCGGGGAGAGATCGCTCCTCAAAACGGGGTCCTGAA CGCTGCCCCGCGGCCCC cg139 GGACGGCGCGGAGGAGCTGGAGGATCTGGTGCACTTCTCCGTGTCTGAGTTG 258 94175 CCTAGTCG[CG]GCTACGGCGTCATGGAGGAGATCCGGCGGCAGGGCAAGCTG TGCGACGTGACCCTCAAGG cg140 CATGCCTAGGGAATGACAGGCATCTCCACAGGCAGGCTGCATCCACCTTGGCT 259 09688 GGGGTGT[CG]TCATTGGCTGCCTATTAGAAAAACGACAGGACAATGCATACCA CCGCCTCCCGACTGTAA cg141 CAACTGCTTGCCAATTTAAATTTCTGGAGAGAAAAATGCACCCACTACAAAACG 260 05047 GACGAG[CG]GAGGGTTAGACCTTTGCCAGGTAGCGCTCAAAATCCGCTAAGA CTACTCCCACCGAAACT cg141 GCTGATCTCCAGTCTGCACACTGTTGGCAAATTAATCTTTCTGAGCTCTTGTTTT 261 59818 CATCG[CG]TCCCTCTCCTGCTCCAAAGCCCTCTGGGACTGCCTCCAGTAGCGCT TCACAAACTTCAGC cg141 CGCACAAAATCCCAGCCTCAAGGGCAGAACATTTTAAATGACCCACCCATCCTA 262 75438 GAGATG[CG]CCAGTTAGGTCATCTTATATATCTTGAGATAGCTGAGATGGTCA GATCAACCAAGGACCT cg142 TACCCCTCTGCCTAGCTACCTGGAGCCGGACTTTGGCCGTGTCCAGCGGGAAG 263 23995 GTGATCA[CG]TCCGCCAAGCACGCCGCTATTCCAGCTGAGAAGAGCTGGACCC CCAGGGTCGGGTGTACG cg142 CATGATACTCATGTATTTCCTTAGATCAAGTCAGCCTAGATCAGGTGTTCTTCCA 264 81160 GAGGC[CG]TATTGAGATCATTTTTATTTGCAGCCTGTGCATTTTCTCATCTCGG GTGATGGCCTCACA cg143 AGCCCGGCTGCAGACTCGTTAGCAGCGAGGCTTTAAATACAAAAGTGGGCCG 265 50002 GGAGCCCC[CG]CGTGGTGCCGCGGTGCCCCCTCATTATGCATGCATGGAAAAG CAAACAAACAAAAACATT cg144 GTCAGTGTTCTTTTAGTTTGCTTAAACTGTGTGGGTACTTGAGTCCTTTTAAACG 266 23778 ATTAA[CG]CTGGGAAGAGGCACCATTTAATTAATTAATTTGTTCTGGAAGGGA TCAGTGTACAATTTT cg144 CCACATTTGCAACCTTGGCCATCTGTCCAGAACCTGCTCCCACCTCAGGCCCAG 267 67840 GCCAAC[CG]TGAGTACCCTGCCCCACTGGGCTAGTCCCTGGCCTGCCAGCTTCA GGGAGAGGGGTCTTC cg144 CACCACAGACTCTGGGAGGCTCGGCGGCTGGAGCAGCAGGCAGCTCCCCGCA 268 73016 GCTCCCGG[CG]CTTCCAGGCAGCTCTCTGAGCCGTGCCAGAGGCCCGGCCCGC CATTCCCAGGTAGGAGAC cg145 GAAGAGTGTCGGGATCCACACAGGAACACACAGGAGAAATTCACCACTGTGC 269 50518 AGGAGGGA[CG]TGGTTAAGGCGAGTTCTGCCATTAACGTGTAATTAGACAACA CTTTTACCCCGCCCCTCC cg146 CGCCGCCGCCTCTTCGTCGCCTCAGCCTGGCGTTTTGTTCCGAGAGACGGGAG 270 89355 AGGCGAG[CG]GAGCTGACAGTGATTTTGACAGTGATTTAAACCCGCTTTTGTT GTTGTTGGCTTTTCGTT cg147 AGTGAACTGAGCAACAGCAAGTGCAAAGGCCCTGCTAGCACCATGAGCACGA 271 47225 TGAGAGAT[CG]TCCAGGAGGCGGTGTTGATGCGGCAAAGGGCAACAGGAAG GGCATTAGGACTTGAAATCG cg147 AATCAAAGGCGGGGTACAGGGCCAGAGGGAGGAGGAAACAACTTCCCGGTT 272 54581 GCTTTCAGA[CG]CTTCAGAGATCCTCTGGAGGCCTGGGGGAGCTTTTGAGTAC TTTATTTCAGTTGGTCCCT cg149 CGGAATACTGTCTGGCTGTGCACGTGGAGGTGGCGAAATGTGGAAGCTTAAC 273 16213 GAAGTTGG[CG]CCATGAAGCTAAAGACTGCTACCCCGGGGCTCTAGCTCGCTC CGCCTAATGGCGGGCCGC cg149 CAGCATGCAGGCACCGCCTCCTCATCTGCATAGAGCCGCCCTCCTCTCAGCCAA 274 18082 ACCTGC[CG]CTCATCTGCATAAGCCCCGCCTGCTGAAGGCTCTGCAGCTTGAAT ATTTTCTGAGCGGAA cg149 GAGGGACGACAGCTTTTACTGTCCCAAATCCTGAGATTAAGACCTCAGGGCTA 275 72143 AATCTTG[CG]TGGCGGTAAAAATTATTTGGAAGTTCTGTGCAACCGTTCCAATA TTCCGCTTTTACGTGC cg150 TCAGGGCTGGCAGTCTGGGCCAGGGTGTGGTTTCCAGCGTCAGGCCAGGCTCT 276 13019 GCTGTCT[CG]CGAGGGTCCGGCCTCAATGCTCCAGGCCCCGGCGTTGGGCCGC GCCTCCTCGTGGGCCTC cg151 TTCTTGACATTCAGAAGTCAGATTCAGGGACCCCATGGCAGAGCCTGTTTCTAA 277 71237 CACTTG[CG]CCTATTCGACTATAGGGACTATATTCTGCACAGAAATATACTTAG TTTTATATATGGTTA cg152 GGACAGGTACACGACGATGACGACCGGGGTGGTGAGAAGCTGCCCGACCAG 278 01877 GTCGGTGAG[CG]CCAGCCAGCCGATGCACAGCAGGAAGGACTTCTTGCGCTT GCTCTCCCGGCGCCGGTAGC cg153 TTCCAGCAAATAGAAAACAACCGAGAGCCTGAATTCACTGTCAGCTTTGAACAC 279 44028 TGAACG[CG]AGGACTGTTAACTGTTTCTGGCAAACATGAAGTCAGGCCTCTGG TATTTCTTTCTCTTCT cg153 CTTTCAAAGGCAAGCTGCAGGGCTCCTTGGTTTTGTCACATTCCTCATTCTGGG 280 81313 GCTTTG[CG]GTTTTGTCTTGGGAATCTCGAGGCTCTCCCAAGGTTCCTTTCTATG TTTATATCATTTAG cg154 CTGGTCCCCCCGGCGGGCGGCGGCGCGGGCAGGGGCAAGGGCTCCGGGCTC 281 27448 CTGCGGCTG[CG]TTGGCTGCTCAGGCCACCATAATCCAGCTCGCGGCTCGCAG CTCCCGGGCGGGCTGGGGA cg154 GTCTCCTAGGGCTGAAGACAACTTGGATTGCGAGGCTAGGGCTTGGGGAGTC 282 47479 GTGCATCC[CG]TTCCGGGCCTCCGCAGCCCAACATGGGCCCCGGGTTCCAAAG TTTGCGAAGTTGGGCGCC cg154 TTAAAACTGTTTTCCAGGGCAGTTTCTCTCTCTGGTTCTAGGACACTTAATTGGG 283 89301 CTCAA[CG]TTTCCCCCAAGTCTTGGCTGTGGGTTTGTTGTGGGCTGGGTGGTTG AGGAGAGGATGCAG cg154 CCGCAGACCCCTCGGTCTTGCTATGTCGAGCTCACCCGTGAAGCGTCAGAGGA 284 98283 TGGAGTC[CG]CGCTGGACCAGCTCAAGCAGTTCACCACCGTGGTGGCCGACAC GGGCGACTTCCACGGTG cg155 CGTGTCACAGACTCTCAGAAAGCACAGTGAGAGTTCCCCTGGTTGAGAATCGC 285 51881 AGGCTGC[CG]CTGGCTTCCCCCACTTCCCTGGGCACATCGGAGGAGGGGGCCA CAGCTGGTCCCTGGTCT cg155 CCCCGAGGCTCCCGCATCAACGCCCTCAGTCGGATGGGACTGAGGGTGCCGCC 286 69512 GCCACCA[CG]CCGGGGACTGTTGACAGCCAGAACCTTTAAGCGTAACAGAGTC ACCTGGCAAGTTTGTAC cg156 ATTGGCAGGTCCTCGATTATCGGCGAGTCACTGAGGTTCCGAGAGGGGCGTCT 287 11364 CTGCTCA[CG]CAAACAGCTACCCAGCCGCCTCCCACGGTCTGACCTCAGCCAAG GTGACGCGGCTTAAAG cg156 CTGTATCTCTTTGTCTCTCCCTGTGTGTGTGTGGGGTCTCTCTCAGTCTTTGTCCC 288 42326 TCTG[CG]TCTCTGGGTCTCTCTGTCTCTGTCTCCCTGCGTCTCTCTCTCTCTGTCA TCTGGCTCTTC cg158 AGAGGGCAGGGCTGTATTCCGCTACTGGGTCCTATGCACCATGCAGAACCAGT 289 11427 GTCTTCA[CG]TGGAGACTCATCACTGATCCGAAAGGTGACTGCTTCTGTATTAC ACTCATTTCCCCATGA cg158 AGAGACACTATCTCCAAAAGAAAAAAAGAGAAACGTATGGTTACATGATTTCC 290 56055 TTCTGTG[CG]ATCATCAGAGTCACTCGCAGACCTGGATGGTGTACGGCCTACA ATGCACCTAAACCACCT cg158 TCCGGGCGAGGAGATCAGCAGGGGTTTTCGAGGGAGCCTGGGGCCCAGGGC 291 81088 AGGGGTACG[CG]GGTCAACTCAACAGATGTAAGGCGTGGCCGAACCCCATTC AGCTAGCAGTACCCAGCCTC cg158 ACTTCTCCGAGGTTACACAGCTAGGAAATGGTGGCAACAGTAAGAGCCCACGA 292 87846 AGAGCTG[CG]GTTGGTAGTTCATTCTGGACAGCCCTCCCGTGAACCGTCCCTGT ACTGGCACTTGTTGCT cg159 CGATTAGTAAATACCAACCCATGCTAGAGAGTGAAGAGCTCTGGAGGAGAGG 293 03282 CACGGGTG[CG]CCCCTGGAGTTGCTCTAAACAGGGTAGGCAGGGTGCTCTTGT CACAGAGAAGATGAACGA cg159 CCCAAGCCCCGTCGATTAGACAGGTTTAGGCACTTCCGGGACTCTCAGAAGCCT 294 63417 GGGAAG[CG]AGTTCTCTGCAATTGGACTAAGCCTGCGACCGTCTGGTATAACA ATTATATGAATAATCC cg159 CAGGTCGGGCCAGTTGCTGGTGAGCTTATGAAGTGTGGTCTCCTCCCCGGAGC 295 66757 TCATGTG[CG]CTTCCCACCTGGTGAGCTCAGGGTCTCTCTGGAGGGATCCTGCC TCCCACCCCTGTCTCC cg160 TTTTCCCTTAGAGGCCAAGGCCGCCCAGGCAAAGGGGCGGTCCCACGTGTGAG 296 85042 GGGCCCG[CG]GAGCCATTTGATTGGAGAAAAGCTGCAAACCCTGACCAATCG GAAGGAGCCACGCTTCGG cg161 CAGGGTGAGAGCAGGTCTCACTCATCCCAATCCCAGCCAGGATTGGGTCAGGG 297 73067 CCCCCAG[CG]CTTACCTGCAGGCAAGGTGCTGCTCCACGACCTTCTCCAGCTGC TGCCGCTGCTGAATCT cg162 GGCTGGGCCAGGGTGGGGCGTGGCCCGGGGCGGGGGAGGGGCGGGGCTGC 298 95988 CAGGCAGGGG[CG]GGACGGAGAACACCTGGGTCCCTAGCACCAAGACTGGCT TTTTATTCATTGCCACCGCCT cg163 TGGTTACCCGTGAGTCACCTCGCTGTGCCCCCTGCCCAGAGCGGGAACCCTGG 299 13343 CTGCGCA[CG]CCCTCAAATATCTGCAGGTGCTGTTCACAATCGCCATAGGGCC GGTGACATACCCAGGAA cg163 GGGAGCTGAGTTGCTGGTAGTGCCCGTGGTGCTTGGTTCGAGGTGGCCGTTA 300 19578 GTTGACTC[CG]CGGAGTTCATCTCCCTGGTTTTCCCGTCCTAACGTCGCTCGCCT TTCAGTCAGGATGTCT cg163 GGCTAGGGACGTTATGTAAGTTGAGCCACGCTACGCTAAAAGTTCCACACTCA 301 40918 ATTCTAG[CG]TCTCGGCTCTGGACTACCAAGTTCCGGAGCAAGCAGACAGACC ACCTCTTTACGTTCCCG cg163 TTAGAAACCTCTCAGTGGGGTTTTTCGAAATGAAAGTCTAACTCCTTGTCTCTTT 302 54207 CTGAC[CG]TTTCCATGCTGAACCTCATCTTTCTAATGGCCCACTCCTCCAGGGGC CTGCCTGACGCCC cg163 CGCCGCCCCCCCCACCCCTCCCCCAGACAAACGATATGACGCACTTAACTATAA 303 57381 ACCCCC[CG]ACCCCCCGTGGCTTCTGGGAATTTCCCAGAAGGTTCTGCATGGGC AGATGCTGAGGGAGT cg163 TATTTAAAGATTGTGGCTAATAGTAGAGTAGATACCCCTGGTATTTCCCAGAGC 304 72520 AGAGCT[CG]CATTCTGGGAATCTTAGGTCCATGTGACTTCCTGAGTCAGTGATT CACACTGAGAAAAGA cg164 CGGAGGGGGAAACAAAACTACAGCAAGACCACCTTGAGTACCTTGGGAAGGG 305 08970 CAGCCCCG[CG]ATCCCTAATAAATGAATTAGCATCTCAAGGAGGAGATCACTG CGGGGCTGATATTGATCA cg164 TCTATGTTGTCTCTATGCCTTGCTGTCTTGCCTGCCTCCTTGTAGGTCCAACCTC 306 66334 GGGAG[CG]CAGCTTTTAAAGAGTGACAGTGTTTGTTTGGATCACCCGCAGCTT GACTCATCCTTGCTT cg165 CTTAATCCCAGGTTTGTTTATCCAAGCAGTGGTGTCAGCTGCCTGGCCAAACCA 307 43027 CACAGG[CG]CCTGGATCCTAGGAGACATAAACCAATCCTCCCACCCAAGCAAA GCCCCGTAGCAGCCCG cg166 GCCGCCCGGGGTCCGAATTGGGGGGGGCGGCTGTGTGACCTTGGGCGAATCG 308 12562 CCGCACTG[CG]CTGGGTCTGCGCTCCGCATCCATCACAGGCAGACTCCTCAAG AGGCTCCAACCTTTTCTT cg166 GGTAACTGCACAGGAGAAGGTGAACCAGTAAGTGGGCCATATGTCTCTGCAA 309 48841 AACTTGCA[CG]TAGGAATCACCTGCTGGGGAACTAAGACACTTTTATGTTTGCA GCAGAGGCTGTGTTAGA cg167 CCCAGGGTCCAGGCCCGCCCTCGGCTGGCAGGTGTGGGCACAGAGGCAGCTG 310 13727 GGATTGGT[CG]CAGCTGGCGGAGGCGCGTCCCAGGCTCCGGCAGACCGCTGG AACAGCTGAGCAGAGCAGG cg167 CCCCCCGCCTGCCGAGGGGGCTGGCGGGGGGGCATTCCTGGGTCCCTGGAAC 311 18891 TCTGAGCC[CG]CGTCCCCCACCCCTAAGGGGCGTGGGGGGGGGGCGCACCCC TCCAACCCCCTTTCCCCAG cg167 AGCCTGGATTCTAGTGAAGCCCAATTCACCAGCCATTTGGTCTTAGTAAGGTCA 312 28114 TTACCG[CG]CTCTAGGTTTGAGTCTCATTTGTAAAATGAAGGGAGTGGAGGGG CTTATAGAGCTCGAAC cg167 GTGCGCGCTATGTGACCTCTCAGGGGTCGCTGCCTTGGACGATCTGTAAAGCT 313 43289 GAGTGCG[CG]CTATGTGACCTCTCAGGGGTTGTTTCCAACCGTGTTGTTGACAT CTTGAGCCTGCCAAGG cg168 GAGCTAAAAGGTAGTATCCCACCCTCTCCATAAACAGACACCTAAGTTATAAAA 314 16226 CTTATG[CG]CTCGATATGCAAAAATAGCTCGTTTTATACAGAAACGATCCTTTC CTTCTTTTCCTTATA cg168 GGCAGCTGGGGATGGGCAGGCTGCAGCGTGGGCAAGACGAGGTGGCTGCTG 315 54606 TGACTCTGC[CG]CTGAACCCTCAGGAAGTGATCCAGGGGATGTGTAAGGCTGT GCCCTTCGTTCAGGTGAGT cg169 GGTCAGTCGGGGCCTGCAGACCGTGACTCCGTCACGAACCCCAAATTCGCTTC 316 33388 TCCCCAA[CG]CTCGGGCCTGACTGCTCAGGAGGGGCTTATGTAACCTTAACCT GGTCCCTCCGCACAGGA cg169 TTTCTTCAAATTAAATTGCTACAGCAGGAAATTACTGAACTGTGGCTCTTCTCCT 317 84944 ACGTC[CG]CCTTCCCTATGTCAATTCCCATTTCCCTTGCTTTCTCCAATAGTTAG GACTGTAAATTCT cg170 GGACAGATGGATGGACGCTCGCGGGCAATGAATGGGCGCTGCGCTCAACCAA 318 09433 GACACTCG[CG]CAAAGTTGTGGCTCCACCCAAGGCACCTGCTCCGCACACTTTA AGCGGCGCCCTGGAGGC cg170 TATGCGATGATGTTTGTTTGCCCTTGACGCACTTACTCATGGATGGTACTTCTTC 319 38116 AGCCT[CG]TTAGACAGCCTGGTGATGGAGGATGAAGAAACCATGTGCIIII CA TTCAGTTCTGGACTT cg171 TGTGTGGGACAGTCAGGTCGGCAGGAGTGCATGAGAACGGTGTGGGCACACG 320 29388 TAAGTGCA[CG]ATCACACATACAAGTGAGCTTGAGAGTGTGTATTCCTGTGCA CTGTGTGCACACCTGTGA cg171 GCAGAGTCCAATTATGTGTTTTCTGATAAAAGCATATGTTCATTGAAAACACTG 321 33388 GAAGAG[CG]GCATACTGGAATACTGGTTTATCTGGTGTATTTCGGGAGTTTAC AGATCACGAAAGTTGC cg173 CCCTCCCCCGCCAGCCTGGCGCATTGCGGGCCTCGGGCTCATTGCTGAGAGGG 322 24128 GGCACTG[CG]CCTGGCACCTCTGTTAAGCAATTTAGGGGCTACAACCTGAGCA AGACAGATGAGCCCGGC cg174 TATGTTGAGTGAAAGAAGCCAGACAAAATCAAGTACATATGGGATGATTCCAT 323 31739 TTATGGA[CG]ACTCTAGAAAATGCAAACTAAAACAGATCAGTGTTTGGGCTGC GGATGAGTGGAGTTGGG cg175 CCTACGAAGAGGTAGGGCTTGGCAAGGACCCACGGGGCGTGTCCTAGGACTC 324 26300 GGTGAGGG[CG]TGACCTCGGGCCAGGGGCGGGGAGAGAACCAGAGGGCGA AGTGGGAGGGCACAGGGGAGA cg175 CCTTCCGGTAGCTCGGTCACTAGGGTCAGTTTTATGACTCTCAGTGGACCCTAA 325 36848 ACAGCA[CG]TAATATATGTATTTTTCACCGCCAAATATATCAAACACAATAATTC ACCCTCCGTTCCCT cg176 ACCCATGAGCCAATTGCAGAGGCAACAGAAGACCAGTGCACCAACCAGGCTG 326 05084 GGTCCCTC[CG]CCAGAGGGTGTCACCATCTAAGCTGAAAGTGTTTGGGGAGAT CAGACATTGCTGTCTGGT cg176 GGAAGCTGGGCTGTGCGTGTATGCGTCTACCATGTGGGGGTGCCTGTGAGTGT 327 27559 GCTGGGG[CG]TCTGCAGTGAAGGCCTCCTGAGACCACTCCACGGAAACACCG GGAATCCCTGCAGCTGAG cg176 GCGTCGCTTTCACACTCGGCGGCTGCGGATTGACGCCTCCGCCTGTTCCCCGGA 328 41104 GGAGAG[CG]AGTGCAAGAGAAAAAACACTTTTATTGAAACGATCCAACCAGC GGCGGCGGAGAAAAGCG cg177 TCCGGGGTTTTTACCCTCGGCAGTTTGATGTCCTTTGTGTCAAGGTCTGGCTGC 329 26022 GGAGGC[CG]GGAAAATGTGGCCCCCGTCAGTAAGGGTTGGGCAGGGAGCTT GGCGTGGCCTGGCGGATT cg177 GCGTTACTTGCAGGATGCAGGAGTGATGCGATCAGAGCCAGCCGGAACCGAG 330 49443 TTCCGTTA[CG]CACTACAGGACTGACCTGGGCCTGACAACCCACTGCCGGAGT TCGGATCGCATCACTGCC cg177 ATGGTTACATGATTTCCTTCTGTGCGATCATCAGAGTCACTCGCAGACCTGGAT 331 70886 GGTGTA[CG]GCCTACAATGCACCTAAACCACCTAGAGGAGCCTCTTGCTCGTG GGCTACAAACCTGCCC cg178 GCGGACTTGTCCGGATCCGAATAGAAGCGCTGTTGGATGCGGATGGGGCGCC 332 61230 GGGGTTGC[CG]CCACAGGTGCTTCGGGGCTCTGGTCATGCTGTGGCGGCCGC GAGAGCGACTCAACCTGCT cg178 AGGCTGGACATTTGCTACTGGTCCCTGAAGTTTTGCGGCTGCACCCACAGACA 333 96249 GCAATAG[CG]CCACGTTCCCTGGAAGGCGCACGGGACGGAAGCGGAAGCAGT AACGCTGGCTCCGGCTGC cg179 GGAGATGGCAACAGGGCAAGCGTCCAGCAATGGGTAAGCGGTGGGGTCGGT 334 03544 GCACGCAGG[CG]TCCAGCAATGGGTAAGCGGTGGGGTCGGTCCACCCAGGGA GCGCTGGTCCCCCTGGAAGG cg179 GGAGGTGCTGCGGTACCTACCATGGTATTCTTGTCCCGGAACGTAGTAGGTGG 335 23358 GGTTGCC[CG]CAATATGCAGGGAAATGAGCACCTCGCCCTGCTCCCCATCCCCT TCCAGCTCCCCGTGGT cg179 GCCTCTGGGAGGGCAAGACCGGGAGGGGTCGGCCTGTGTCGGGGGCTCCTG 336 40013 GAAAAGCAG[CG]CCACCGCCACCCACCTGACGACATGGAAGGCCCAAAGCAG GCGATCTGTGCGAGGCCCGC cg179 CTGGCAGATGTTTGTACTGGGAGATTCAGATCCATCCAGGCCCCCACTGTTAAT 337 66192 AGCCCA[CG]GGAAAGTCCCTGCAGTCTCTCAGGGAAGTCATTCTGTGTAGAAT CTGTAATTTCACAGGC cg180 AGCTGGGGCTCGCCTGTTGGGAGCCGCGTCCGCCGGTGTTGGTGTCTGCACTT 338 01427 GGAAGGA[CG]TAGGGAATGCGTTGTCCCTGCTAGGTACTTTTCAGTCGCAGAG TTCTCTTCTTCTTCTTT cg180 CTTGGTGTTCAGCACCAGCCGCCCCCCCAGCCGCATCATCTTTTCTTTCAACAAC 339 03795 AGATG[CG]CCCGTGTTTCATCTATGGATAGAGCTGAGCCGAAGAAAGACATTG CCACAGCCAACAGCA cg181 TGATAGTATTTTCTACTGTCCTATACACATCAGGCAAGACTTCATGGAGAGCAC 340 17393 TGAACA[CG]TACTCACTATGTGCCTAGCATTGTTGTTAATCACTTTACATGAATT AGTTCATTTAATTC cg182 CAAGAGCGACCCTCGTTCTTCACACGAGGAGAAGAAATGGACACGTGATTGAC 341 41647 CATTAGG[CG]CCACCAGGGCCAAACTATCTTATGGAAGGAGGAAAAGAAGCA CAGAAAGGGCATGAAATT cg182 GGGGCCCTGGCCCGGGACCAGCGCCGCGGCTATAAATGGGCTGCGGCGAGGC 342 67374 CGGCAGAA[CG]CTGTGACAGCCACACGCCCCAAGGCCTCCAAGATGAGCTACA CGTTGGACTCGCTGGGCA cg183 TCACCCCCGTCTTGGGGACATCAGGTCTGTGAGCACCCATACCCCAGCCAGGC 343 84097 ACTGTGG[CG]CCCCACTCGCCCTCCCGCACTCCCTCCTAGAGATGCCCTCTTATA TCCCCGGAGTTCGCA cg183 AGCAAGGGAAGTTGGATGAGAATTTGAATCCAAAGCGTGCCATGGGACCACA 344 92482 ATTGCACA[CG]ATCAATGAGTCTCACAAACTGACCACGGCTTATCTGAGGCAG TTTAGGGTTGTGCAAGAG cg184 AAAAGACGAGATGACAAGACACAGACAGCGAGCATGTGCCTGTGCACATTTG 345 68844 GGTCTGTG[CG]TCTCTGGATGGGGGTGAGAGAGAAAATAAAAGAAGGGGAG TGGAGGAAAGAGAATGCCCG cg185 AGGTTAAACGGCACTGACCATGCTGAGCCACAGCCGGTAAAGATGGCGGTGG 346 87364 CACACTGA[CG]TCACTTCCGCTCCGAGCCTCCGGCCGGGTGGGGCTCCAGGGC TTGAGTTTCAGGCACGTA cg186 AAGCCCACGTGAGAGGGCAGGACGCCTGAGAGCTTGAGGCCACACGAGGCTG 347 91434 TGGAGCGG[CG]TGACTCAAACGTGGCGCGCATCAGCTCGCACACTTCCAAACC TCGCGATAGCTACTGGCC cg186 GACCCAGGCGACTGACATGTTCCTCTCCTCTCAGCTGAAAAGCTTTGCTAGCTC 348 93704 TGTCTA[CG]CATAAAGTAAGGTTAAACACAGATTTTGCCCCGAAGGGCATTAA TTAGGGACCAATTTAC cg187 CTGGAGGGAGGAAGGTGTGGGGGGACCCAGGGGTCCTGTCTCCAAGCCTGGT 349 32541 TGCTCTTA[CG]CGAAAAGTTGGGACACTGAGGTGTCACAGCTTCTCTTTTGAAA TGGAGAGGAGGTAGGAG cg187 TGCCGTGGGGAAAACCTGCCTGCTGATGAGCTACGCCAACGACGCCTTCCCAG 350 71300 AGGAATA[CG]TGCCCACTGTGTTTGACCACTATGCAGGTAAGAAAAAGTGGGA AACTCTCTGCATCCAGA cg188 CTGGCAGCCAGTGGTTCGCCGGCACTGACGACTACATCTACCTCAGCCTCGTG 351 09289 GGCTCGG[CG]GGCTGCAGCGAGAAGCACCTGCTGGACAAGCCCTTCTACAAC GACTTCGAGCGTGGCGCG cg188 TCAGTGCGTGTTAGCGAGCAGCGCCGGGAGATAGCTGTCACCGCCGCCCGCTC 352 81501 ACAGATG[CG]TAGACTGAGGCTCAGGTGTCACCACCTGACCAAGGCTAGTTCC GCTACAAAGCTGCCGAC cg189 TGGGTGGAAAAGGAAAGGGCCCATTAGACGAATCTGATTCATCTTCTGTGACT 353 96776 AAGCACC[CG]CAACAGTTAGGAATTTAGGCAGAGCTGGTGATCCTGGGACAAT AGCACTTCCTAGGTAAT cg190 GCGCGCGTGCCGCCGCCGCGGGCACTGCGCCCGTTTGCCTGCCCCTCGTCGGG 354 08809 GATCGGG[CG]CTCCCTCTGAGACCTGAAAGGGCACCCAAGTGCCCCCTGTCTG CGAAGTCCGGCGCGGGC cg190 GACCCCCGGCAGGGACGTTTTTCTGCAAACTCACAGCATTTGACAAAGTTACAT 355 28160 AAACGG[CG]CCCGGCCGGCCCCGGCGCCCGCCCGCCCCCGCCCTCACTCCCGG CGGCCCGGAGCCCACC cg191 CGTGCGTGGCCAGGATCACATCGTTGGGGTCCATGGTGGTCTTCAGCAGGCCC 356 04072 CTGTAGA[CG]CGGTAATCGCCGCTAGCGTCCAGGACGCCTCCAGAGGCCAGC GCGGTGCGGAGCTGCGCC cg191 GAGCCTCAGGGGCGGAGTCTTAGTGTCCAGAGGGGAGTCAGGGCAGCTGGA 357 49785 GGTCCAGGG[CG]GGAACCATTGAGGCTGGGACCCTACGAGAACCCCCTACCC CGTGCCCTTCGGCCTCTCTT cg192 GGAAGCAATCCGGCCCCTTTTTGGCAGCGAGTTGGCCCGGTCTTTGGCTGCCTC358 87114 AGACCG[CG]TTGCCCTCCAGCCTCGAGGCAGAGAGCTGCCTCGGTGCCACAGC TAAATAAGCCCGGCGC cg192 GGCAAGCAGGTTTGGTTCCTGCCCAGCAAAGGTGAGGGAGGACGGAGGAGA 359 97232 CTCTCCCAC[CG]CATTCAGAACTTTATTCCTTTATTTTTGTCTCAATCTTGTCATA GAGGAGCGCTTCACTT cg193 CCGCTGCCTAGTCTGCATCTGAGTAACATGGCGGCGGCGGCGGTAGCCAGGCT 360 45165 GTGGTGG[CG]CGGGATCTTGGGGGCCTCGGCGCTGACCAGGGGTGAGCACG GGCAGCCAGCTGAGACCGG cg193 CAGGAACATCACTTGGTAATTAAGAGATCGCCTTGCTTCAGATCCTTGCTCTCC 361 56189 TAGCCA[CG]TGACTGTGAGCAAGTGACTTTGCTTCTCTGTGTCTGTTTCTTCAAC TATAAAATAGGTAT cg193 CAGACGCTTCTGAAAGGGCAAAGACGACGCCAAAGAAGACGCCGGAGACCTC 362 71795 GAATAGGG[CG]CAGGTGGACATCTCTGATTTTCAGCAGACCAGCCTGTATGTG TCTGAAGTCTAGCAACGA cg193 GAGGAGGGCGCTGGTGCTCAATGAGTGAGCCCACCTGGGGACTACCAGGACG 363 78133 AGGACGGG[CG]CAGGTGAAAGTCCTGGGCTCATTGCCCCAGCATCCAACTTTC ACCCTCTGTCCCCTTTAG cg193 AACAAACAAAGCTAAGGTTCTTACCCCACGGCTTGCACTCTCTCAGCAGAGCTG 364 98783 CAGGTG[CG]TGGATGATTCGTTGACACGGTCAGAATTGGCTGCAGGAGGGAA TTGAATCGAGGTTTTCT cg194 ACCGGCGCGAGTTGGAAAGTTTGCCCGAGGGCTGGTGCAGGCTTGGAGCTGG 365 39331 GGGCCGTG[CG]CTGCCCTGGGAATGTGACCCGGCCAGCGGTGAGTTGGGGCC GGGGCAGAGGGCAGGGGTG cg195 CGGGGCAGCCCGCCCCACCCCTCCCCCCAGGCTCCTCCCCATCCCTCCCTGCCC 366 14469 AGGCCG[CG]AGAATGACCACTCCACTTGCAGGCGAAGCCCCTGGCCGCTGTGC TGAAGGAGGTGTGCGA cg195 GTGTGGTGCTTCCTTCTGACCTTGGGCACCTCCGTCTTCAGTTGCCCCTCCTGTG 367 56572 AAAGG[CG]AAATGTATCGTTGGGTTCTTTGAGGCCCTTTACAGCTCTGACATCC TATAACATTCTGTA cg195 CGGGCACTATGCTGAGCAACTGCAGCTCAGGTCCTGCAGAGTCCCCGAGAGTA 368 60210 CTTTGCA[CG]AAGAGAGCTCGAGTTCTGTAGTCAGGCATATCTGACCTACCGA ACAGGTGCCCTGGTCAA cg195 TGGAGCAGGACCAACTTACCAGCTCGCGGTGCTCCCTAGAAGCTGGATTCTTC 369 66405 GCAGGTG[CG]AGCACACCCCAGATGCCAGCGTGGACCCTTGAGCAACTGGAA GTTAAAAACCCACGAAAA cg195 ATCATTCATTCATTCATTCATTCACCCATTCACTAATCAGTAAAATTTAAGTGTCC 370 73166 ACTA[CG]TTCCAGGACTTGCACTAGACTTTAAGGATAACAGGGTGGACAAGTT CCACTTTGGAGACC cg195 GGAAAAGTCATTTTAAGTAAAGACAACGAGTTAATCAGGAGGCGATGAGCCC 371 86576 AGTCCTTC[CG]CCCCGCTTTCCCGCTTCCAGCCCTCGAACGAACCCTCCTCTAAC CCCCGGGAGGCAGGAG cg196 TGGCTTGGGGTCTCAGGGAACCGAACCGCCCTCCCCCCAGACCTGCTACCCCA 372 15059 GGCCCCA[CG]TTGGTGCCCATTTCACAGGTGATAAAACCGAGACCCAAAGAGC CGGTGTCCGGCCCAAGG cg196 AAATAATCAGCAGTTCCTGGTGGCATGTAACCAAGTAAAAACCAGTTACACAG 373 32206 AGAGCCA[CG]AACCCCCAAGGCAAGAAAGCAGAATGTGAAAATGCTTTATATG GGGGGGTGGGGAATGGT cg196 GGCATGGGGGCTGGGGGCCGAGATGCCCAGGTTTCTGGGTGTAAGGACTCAC 374 63795 CATGACTC[CG]CCAGCCATCACTGCACCTGCCGTCTCTCCCCACTTCCTCTGGTG GGGCAGGAAGCTGAGT cg196 TTGTGAGACACTGTTTCTGAGAGCAGCTTTTGTGGCATCTTACAGGGCAGATTT 375 85066 CTGGTA[CG]TTCTAAAAGTTGAATTTCTAACTTTGGCTGGTTGTGGCCCCTGAC TGTTTTTTTTTTTTT cg196 ATTCCTTTACTTTTCTATAACTCTGTCATGACCAGTTTAAAGGCCCCAATGTCAT 376 86152 GTCCT[CG]CATTAACAACCAAGGCTACAATGCAAGCCCTGCCATGTGCGCTTCT TTACAAAAGGTCAA cg197 TCTGCTTACAGCTGCTTCCAAATTAAGCATATCTGGATGGTGTGACACTTTTTGT 377 22847 TAGTC[CG]AGAACTGTATGGGCATCGCAACTGGGCCTGTTCCAAGATAGACTT GTTGGGACCTTCAAA cg197 CATTCTTATGCGACTGTGTGTTCAGAATATAGCTCTGATGCTAGGCTGGAGGTC 378 24470 TGGACA[CG]GGTCCAAGTCCACCGCCAGCTGCTTGCTAGTAACATGACTTGTG TAAGTTATCCCAGCTG cg197 AGTTTGAGAGACCAGGGCTGCTGGGGCCTGGTCATGCAGGGCCCGGACAGGG 379 31122 GGCTGTCC[CG]CTGTGAGGAAGCTCTTGGCTTACCCTCCTCTGAGCCTCAGAGC TTGTGAGGTTAGTTCCT cg198 CCGTCTCCTCACCTGCCCCACCCGTGGCCTGGGTTTAAAATCCACATACCCGTCT 380 83905 TTCCG[CG]GCCAAAGTGATGCTGCCAGGATTGGTTATGACCCCAACTGCCCCG ACCCCCAGAAGTGCA cg200 AAGAAGCCCTCACCGAGAGCTGTGGGAACAAGAGCTGCCGGGAACAAGAGCT 381 66677 GCGGGAAG[CG]GCTCCTACGAATTGGTGGCAGGAGGCACAAAAACGAAATAC CTATTTTTGGAATACGGAA cg200 TAAACCAGAGACTTGAATTATTGGCAAATGTCCAGACAACATTCACAATGCTTA 382 90497 CTAGCA[CG]CTATTGCCATATGTACCTGGAAAGAGCAGCATAAAGAAGCCATC TAATGATATTACACAC cg201 GGTGCCTCCAGGCCACGTGGGCTGGCAGTCAACTCACCTGTTTCTCAGAGGAG 383 62159 TCCAGGA[CG]CACAGAAGGTGCCGGTCACTGCCCTCTGCCGGACCCATGGAG GGGTAAGGGTGTCCGGCC cg201 AGCCCCACCTCTCCCTTAGGGACCTCCGCCCACCCTACCCTCAAGCCAGGATGC 384 73259 CCGGAG[CG]TCCCCGGAAGTGGGTGTGGTTCAGGTGATTTAACTCATTATTTA ATACGCCCGCAGGGTG cg202 CAGAGTAATTTAACCCAGGATTGCTGACTTTTTAAGAGCTGAGAAAGCATAGCT 385 34170 ATGGAG[CG]CAAGGCCCCACCCAGCAGGGTCTAAGTATTCCGTCTGCAAAACT GGCAGGCCACCAACGG cg204 CCTGGGGTGTAAGTACTGCTTGTGGGAGAGCCCCACAGGAAATCCAGAGTATT 386 92933 GCGCATG[CG]TGCTGTCCAGAAGGCGCTTGAACTCGGCGGCTTCCGTAGCGG GAGGGCGAAAGATGGCGG cg205 GCTCGGTGCCCATGGCCCACTGCTGCTGGAGGAACCTGTGTCTCCCTTTGCAGC 387 50118 CTGTGG[CG]CGCCTTCCTTGCAGGGTGTGTACACTGGCTGTTTGCAGAGGGGG TTTGTGCATCCTAGTT cg205 GCGCCCGGAGCCGGGCTGCTTGGTTCCAGTGTTGGGCCACATACTGCTTGCGT 388 70279 GCTAGGT[CG]CCCCTCCGGGTGGCTCAGCCTCTTCCCCTCTCTCACAATCCCTG AATCCCTCTGTCCCTT cg205 CCTGAACACCGCTCTGCAGAATCTTGGTGGCTAAGGTGTCCAGGAGCCTCTGC 389 72838 AGCGGAC[CG]CCAGCCTGAGAGGCGCAGAGCTTGTCGGGCAGGGGCCCGCTT GTCCCACTCCCCTGATTT cg206 GCCCGCCCGGGGCTAGAGGCGGCCGCCGGGAGGGCGCGCGGCGCCGGAGAC 390 52640 ATGTCCAGG[CG]GAAACAGAGCAACCCCCGGCAGATCAAGCGTGAGTCAAAC TTTGCCCGCGGTCCCCTCCG cg206 CCTCCCAGTGGCCACGCGCCTTCTCACGCCCCTCTCCCGTGACGTCATGCTCCTC 391 74577 TCGCG[CG]GCATGATGGGAGAATCCTAATGTTTTCCAACAGATGCTCCAAGAA CAGCTTTCAGATTAA cg207 CACCTGGTAGTTGTCTAGCTGCTCTTCGGTGAAGATGGTCTGCTTGTTCCCCAT 392 61322 GGTGGC[CG]CCGCGCCGCCGCTCGCCCGCCCGGGCTCCGACTCCCATCAGCGG CCGCCAGACCCGGAGC cg208 GACTCCATATGCCCTAGGGATGTGTTGTGATGAACTTTTCCTACTGGTACTGTTT 393 28084 CCTCC[CG]CGAGGGAATGTCTAGACCAGCCGCACCTTCTTGCTTTGACCCTTCA GAACTTTGGCCTGT cg208 TCTGCCGTACTGTAACTGAAACACAGGTTCAGTTGCTCACTGCTTGCAGAGTCC 394 91917 AGTTAA[CG]AGAGCGGGATCTGTTATAAAGAAAGTGATTTATTCCAAAGCTTA GCTTATGAGAAGAAAT cg209 AGGGAAGAAATCAACTCCGACTTCTTTGCAAAACTGAAATCTCTGTGAAATAGC 395 67028 CAGATG[CG]CACACCAAATAAGGGTTTCTAAAGAGAACCCAAGTTACTTTTCA ATTAAAAAAATAAAAT cg210 ATAAACCCGACTCAAAATCTGTCTTTTCCTGGGCAGATTGCAAAGGATTTTGCA 396 06686 TCTCCC[CG]TTGCTGTTGCTGCTGCTCACACAGTCTTGGGAAAACGGGGGAAA ATCAAGGAAAGAGAGG cg210 CCGGAGGCAGCAGACAAAGACTGGGCAGCACCGGGCACGTTCCCGCTCCTGG 397 53529 CCCCTCCC[CG]GGCCGCACTTCCAGAATGGGAGTGAATTGCCTCCCAATTAAA GAAGCAATTTTTTAAAAA cg210 GTCTTTCCAAAAGGCATAGGAAATCAGCAAGTTTCCACCAAATATACCAAAACC 398 81971 CTAAGA[CG]CGAGCCAGCCCAAGGGTGCAAGGTTCTGCGGCTGCAGGTGATG TGCGTGTGTGCGAGTGT cg210 GGTGTGGTTGGTGCGCAGGTCGGCGGGTGACGCGCGGTCTTTGCACACTGGG 399 99326 CAGGTGGG[CG]ACACCTGCACCTCCCAGCAGCGGCTCACGCACCCGCGGCAG AAGTTGTGGCCGCAGCGCA cg211 AGGACAAATGGGTGCAGAGATTCAGGCTGGCCAAGGCTGGCACAAGGACATT 400 20249 CCCAGTGG[CG]AGAGCATGAGCAAGGGTCACGGATGTGCCAGGAGGGGAGG CGGAGAGATGCCTGGGACCA cg211 TCATCTATCAACGTAGTAGGCACTGTCCTAGGCGCTAGGGATTCCATGCAGAG 401 37706 CAAAAAA[CG]TCACAGTCCATGCCTTCACATGGCCTTCATGGACCACCGCGGG TGTTCTTTTTCCCCCGA cg211 CTCTGAAACGGACAAGATGGCTGCCACCTCTTCGCGCCTCTTAGTCCCACCCAC 402 84495 TCAGGG[CG]GAGGTCTGCGTCATGTGACCCTCCCCTTCTTGGCTCCGCCTCCTA CCGCAGTGCTTGACG cg212 CACTTAATTCTTGCAAATACCTCTCGGTGCTGACTTCAAGGAACTTGGCTGGCT 403 00703 TTGGGC[CG]CAGAAGTGAAAAACACAAAGCTCTCCACAATGTTCAAGTTGTTTT CTTCTTAATGTTACG cg212 AGCCTAACATCAACTCTTTTAATTGTCATGACAATTCTATGAGATGGGCACTTAT 404 01109 CGCCC[CG]TTTCACAGACAGGGGATGCAGAGGGTACAGAAAGGTACAGTGGC TTCCTCGGGGTCACTG cg212 CTCGGCCCACACAGCCTCCGGGTGGACCTGCAGGGGCCTGTTTGTGCTGTAGG 405 07418 CTTGACA[CG]TCCAGGTATCTCTGTGTGTCTGTGTATCTCAGTGTGAGTGTGTG TGTGTGTGCACACTTG cg212 GGTGCGTTGTTCGCGGGGGTGAATTGTGAAGAACCATCGCGGGGTCCTTCCTG 406 96230 CTGAGGC[CG]CGGACACCGTGACCTCGCTGCTCTGGGTCTGCAGGGAAACGTA GGAAAAAAAGTTGTCAG cg213 TTGCATTCAGGTAGATTATTTGGAAGATGATTTAAGGACGTACCAGTGCAGGA 407 63706 GTTGTCG[CG]GGACAGTGAGACCAGGGCAGTTTGACAATCAATAAAGGGTGC ATCATTGGCAAGCTACCT cg216 CCAATGGGGAAAGGCAGTGTCGGGACTAAGCAATGAATGGCTCTTCAATGGC 408 49520 CAGCTGCC[CG]CCCAATAGGATAAAAGAAAACCCCACATAATACTTCCCTTTGT CTCCAAAAAAATTTATA cg217 TGGAGCCCGAAGGCGCCGGGCAGCCTGAAAGGGAGAGGTGGGTCCGGAACC 409 12685 ACACCCAGG[CG]GGTAGCCTGGGGCATCCTCAGACGGACTTCAAAAGCCGCTT CACTTTCCCCTGGTGGCCT cg217 AGTCTTTCTTCTTGAAAGCATTGTTGATCCAAATCCAAGTGTCAAGGTGCGCCC 410 62589 CAGAAA[CG]CTGCTTCCCAGACAGTCGTGTCTGGTCTTGCGGGAAAGGAGGA GGCGTCCCGCCAAGGAA cg218 CCACGAAGAGCTTGATGGCGTCGTGGTCCTTCATGGGTACGGCGGGACCGGG 411 01378 GTTTAGCC[CG]CTCATGCCGACGCCGCTGTCCGCGGTGCTGAAACCCAGGCGC GGGCCGGGGCCAGCGGGC cg218 CGCCTGTTTCCCGCCTGCTCTCAGGAGCGACCGCCAGGGGGCGCCCGAGATGG 412 35643 CAGGGGG[CG]TGGGAAGCCCACATCTGCCCAGCAGGTGCGCCCACCCCGAGC AAACAGGGGGCCGGGGCC cg219 AAATATTACTGTTTATTACCAGGCATACCCCAGTAAAATAAAGAGGCAACCAG 413 07579 GCGATAG[CG]ACTATCTCACCAGCCGCTGCACCTATAGGACTTGGAGACGTCA CGAGTCACGCAACCGGC cg219 AGCTGCCAAACATCTGGATCAACCTGGGCACTACGAGGGGTTGAATTTCTACC 414 26612 ATTATCG[CG]CCTTTTGATATTTTTTTCCAGACCTCCTGCTCACATCCGTAAAGC CCACTGATTCTTTTA cg219 AAGAAAGCTCAAAGGTACCCTGCAGACACTCAAAACTTGAGGGCACGCAACTC 415 93406 TCAGTTA[CG]AGTGGTGGCAATCATAATGACAGAATGAAGTACCAGTGCAAGA AACTGGAAGCGTGTGGA cg220 CCATGGTGCCCTGGGGCCCTGCTACAGGTGCTCAGGTAGGGAGGTAGGGTGC 416 90592 CTGCTGTA[CG]CTGGACCTGGACCTACTGGGCCCCAGGCAGGACATCCTTTAG ACCCTCTGGGAGGCTCCA cg221 AACACAGGGTAGGACTTCAAAACACCAGCGTGAGCGAGGCAGGCACACACGG 417 79082 ACTCGCGG[CG]GTCTGTTTGCAACAGCGCTGGGAATGCACATTGGAAAATCAC ATCTTGCATGCTGAAAAC cg221 CCCGGTTGGTGAGGGAGGGAGTCCCAACCCAGGGTTATGGGTGGCTGGACAC 418 94129 ACAACACC[CG]ACACTGGACAGATAAGACTGACAGCAGTTCAGCTGCATGTAC TCACGGCCTGAGGCAGGA cg221 GAAGGCTCCTGGGCCTTTCTGGCTCTGGGAATGAAGCGTGGAAAACCCTCCTT 419 97830 AGGCGGG[CG]CAGTGCTTCAAGTAGCCAAGCTCTGACTTCCGAGGGAAGAAA GGAGGCCATGGGCCTCTG cg222 AACTCAGTCCCGTCCCTTTTGTTGACAGGTTGCCAGGATACATCCAGGCAACAA 420 82672 AGACTG[CG]GTTCCTGTTACTCAGCAGCCTCAAAAACTCACACCAGCTCCTGCA AGGAATGTGAATCTT cg223 CTCGCCAGGCGGCGCTGTGCCTGGGAGGACTTTCCCGCTCATCGCGGGGGCTG 421 95019 CACGTGG[CG]CTGAAGCCGGGGTCCCACCCCCAATGTGCTCGTCCTACCACAG CCAAGGCTGGGATTCCA cg223 TGTGCGGAGCCATTCGCTGCGCTGAAGCAGTGCGCATGCGCACTGGACGCTTC 422 96353 TTACCAG[CG]TCCTGACTACAATACCCAGGACGCACCCAGCCCGCCGCCTCTCG GAGCCCTTTTCAAACC cg224 GCGGCGGAGCGGCGGGTTGGGGCGTCGCACGGTGAGAAAGGCCGGGGCCTG 423 07458 AGAACAAAC[CG]CCGCGGTCGCCGGGGCAACGGGACGGGGCACGTGCCCCCC CCGCCAGAGCCGGAAGCGGC cg224 GTAGTTGCGGGGACCTGGGAGGCCGGGCTCTTTCCTCCTTGGCCTGCCTTCCG 424 73095 CTGGCTG[CG]TGGGGCAGCCAAGAACAAAGCCTGCGAGCTTCCATCAATTGTA AAGCAAAGCACCCTTTA cg224 GGCAGGCAGGCTCCATAGTGCCAGGCATCTGGCTGGCTCAGCAGCAGGGGGC 425 84793 GATGGCAT[CG]TCTTCCTGCCCACCTGGGAGCCAATGTTTCGGCTGGGCAAGG ACAAGCCTCCTCTGGGTC cg224 GAAGGCCCTGACCCTGCTGAGCAGTGTCTTTGCTGTCTGTGGCTTGGGCCTCCT 426 95124 GGGTAT[CG]CGGTCAGCACCGACTACTGGCTGTACCTGGAGGAGGGTGTGAT TGTGCCCCAGAACCAGA cg225 TATTAGTAAAGCGTTTACTAAATTACCGAATCAAACCGAACTGGCTTAGGTTCT 427 11262 CAATAG[CG]TGGAAATCCACTGAAAATAAATGAAGAGGGCAAACTACAGGGG CTCCGCAGGTTCGGGTC cg225 CAATGGCTAAGGAGTATAGAAAGGATCATTATAGTGTGTGTCTCTGTGGGTCC 428 12531 TATGTTA[CG]GCAAGATGAAACAAGCTTATTAGGCTCTGTCTTTTAAGGGCATA CCAGTTGAAAGAGCAT cg225 ACTTGCCCAACATGAGCCCTGGTCTTGTCTGACCCCAAAGCCCATGGGAAGTTT 429 80353 AGGCTG[CG]TGGAAGGACAGCCTGGTGGGCTCAGGATCTGTCCCATCACGAG TTGGAACCTCAGCTCTG cg225 ACCTAGGAAGTAAGATAATTTTAAAAAGAGAGCACTTTGGCAGTGGTGAAGCA 430 82569 GGTGAAA[CG]GTTGAATACAACACCTGTGGTTTCAAAGAAAAGTTCCCACAGA GCGGATACACTACTCGT cg225 GGACGGCAAGGACGCGTGGCTGGCGACGGTTTCGCAGGGGCGCCCGTTCCCC 431 94309 TGGGGGCG[CG]AAGTCCCCGCTCCACCGCTGCCCCAACTCGGCTCCGAAGTGC CTTTGCCGCAAGACTTGC cg227 TGCGCCAGGGCGGCCACGCAGGCCAGGCAGACCACGTGGCCGCAGGACAGGT 432 36354 TGCGCGGG[CG]CCGCTGCTGCCGGTGGCCAAACTTCTCAAAGCACACCTTGCA CTCGAGCAGGCTGATCTC cg228 TCACATCTGTCATCTCTCAGGTCATATCCAACACACTGGGCCACCCACGCACAG 433 09047 GGACGA[CG]CGACAGCCCTGTGGCTCCACCGCACAGGACAGCCACGACTGGC AATCCTGTGCCGGCCCT cg229 TAGCTATGACACATGGCTTGGAAATTAACCTTTAACCAAACATCTTATAAGTAA 434 47000 CGCCAG[CG]CAGCTTCCCTTGTGAATGTAAAGAGATCCAGGGCTCTTGGAGAG GGACAAGTGAGAGCCA cg229 AGGGGGATTCCAAGAGAGATTTTTGTAAATGTCAAATAGTCGACCTCATGCTG 435 71191 GGCAGAA[CG]CTGTATTTCAGTATACAGGGAAGATAAAGAAAGAGGTAGAGA AGAGATTGTCCTGTTTTC cg229 GACGAGGACAGGACCTCCTGGATGCACTGGAAAGTCGAAGAGACATGGTATC 436 83092 AGGGCAAA[CG]CGTTGCAGAGCTGTATTTGTGAAAGCCAGAATGGAGTGCCTT CTTGTCTAAAAGGTTTGG cg229 GAGGCCCAGCAGGTAAGCACTTGTGGAGGCCCCGGTGGCTGCTGGTTAGCTCT 437 91148 TGAAGCT[CG]TCCCCACCCTGCGTGCGTTCTAAAGAGCCGCGTTTCTATTGCAA CTGCCTGCCCTGCGCT cg231 TCAGTCTCCCCATATTTACAATAAAAGGGGAGCGAGGTGGGATGGCGCTGAG 438 24451 GATCCCTA[CG]TCCGATCCTAATCTCCAGCTCAGGCAGGCTCGGCCGCCACTAG CATCCTGGAGCGACAAC cg231 AGCTGTAATTCCATTGACAGTGAATTGGAGTAATAGCCCTCCCCCGTCTCCCAA 439 27998 GCTCTG[CG]TCCAGTCCACACAAAGCCCACGGCAGCTGCAGGCTGAGCTTGTC CTGCTTCAGATCACTC cg231 AAACGGAGACTCAGCAACGGGGCTGATTTGTCTGTGGACACACAGCGAACTGT 440 52772 AAGTCCC[CG]CCTCCCTCTGCACCCGCGTGCACCAGGGGGCTGCTGGGGGTGC GGGGACGCGGGAGACCT cg231 TCCTTGAGCACACACCTTCTCTCAACAAATGACAATACTTGGCAAACTGAACTC 441 59337 CTCCCA[CG]AGTCGCCCTCTGCTAGGAGGAATTGCTGGCTGCTCCCTGCTTATT GCATTCTCTCAGAGC cg231 CCGGGGCTGCCTGGCCTCCTGGGTGCGGGAGGTGCCTCCAGATTGGCCTGGCT 442 73910 TCTGTGA[CG]CTGGCCCAGATCACACACCAGAGCCCTTGGTGGGCAGCGGCAC CTGCAAGCATACTGCAG cg231 TTCCGTGTCTCAGATGGGGCCTGGGTCAAGTCCTGGGAGTTGATGGAGCGTTT 443 91950 CCCAAAT[CG]CAAAAGGAGAGGAGCTAGACTTACCTCCCCCTCCTGGGAAGTA ATGCGCGACAAGAATTT cg232 ATAAATTAACAGTCAGATCTAGGGGCTCGATCAGATTTGTGTGTGTGTGTGTG 444 13217 CCGTGTG[CG]CGTGCACAGCATGTTCTTTGACTAGGAGGCACACCTGCTTTGG TTATCTTCTTTTTGTAA cg232 GAGGCCTGCCCCAGCCTCAGGAGGAGGAGCCTGGCCCAGTCCGTTGCCAAGC 445 34999 CGAAGCAG[CG]GCATTTGGACAAAGCAGATCATCTGCAGGTATTATATACATG GGCAGTGCAAGGAGGGGG cg232 TGGAGGTGCTGGGCAGGGGCGGCGCCCCCTTCCCTGGCCGCGGTGCGCCCTT 446 39039 GCGCCCGG[CG]CTTGGGTCCTGCGAGATGAGGGTCTAGAAATACACAGCACC ACCCGACCCCCGCATCGGG cg233 CAATATTCATTTTATTAGGCCATTGTGAGAGATCTCAGCTCAGCATAATGGGCA 447 38195 ACTTCC[CG]TGACTCTGGGCCACTGGGTTATTCTGGGACTTAACTACTCTGAGT TTTCTCACTAGAAAG cg233 CTTCCGGCGGACTTGGCCTTTGCGGTGCGAGCTCTGTGCTGCAAAAGGGCTCT 448 76526 TCGAGCT[CG]CGCCCTGGCCGCGGCTGCCGCCGACCCGGAAGGTCCCGAGGG GGGCTGCAGCCTGGCCTG cg235 TTTATCACCCTTTCGGTAAATAGTGGTCCCACGGCTCGGCCTGCTTTTGGAATG 449 68913 AAGCTA[CG]CTTGGTAAGTTCAACTCTCTTTCACAGCCCTCTCCACAGAAAGAA CTCTGGAGTTCGTTC cg236 AGAGGGAACTCAGCAGGACAGTGAGGTGACCTTCGCTGTGGCTGTTCCTGGG 450 68631 GACTCTGC[CG]CCACCTCTTCCCCTAACGCCTCCGCGTGTGAATCCTCTGGCAC CACCACTTGCCCCATAT cg237 GCTGACCCCGGGGAGCGTGGACTACGAGTTGGCGCCCAAGTCCAGAATCCGC 451 10218 GCGCACCG[CG]GTAAGCTGCGCCTTTTGAAAAGGCTATCTGTACTCCTTGGAA CAAACCACCCCGGGCAAA cg238 TGTGCTCTGGAAAACACATCCCATCAGAGCTGAATCACCCACATGGACTGTTAG 452 18978 CTCAGG[CG]GGGAAACATTCAAGTCATTCAGGCCCAAGGAATAATCTATAGAA GTCAAAGGCAAGAGGA cg238 GAGAGCGGGTAGCGGGGAGGGCCGCCCACGACGGAGGTTTCTCTGTGGTTAC 453 32061 CTCAGCGG[CG]CTCTTCGCAATCTGAAAGTTGGGGCAGCTGAAGAGCCCCACC ACCTTCACCTGCAGCGGC cg241 CTGGGGCCTGGGGTCACCTCCCCTCTCTGGGCCAATCACCTGTTGAGTCTGGA 454 10063 GCACTGG[CG]GCTATTCTTAGGGGTTTCTATATTTAAAATGGGGCCTGACTGG CTTGAGGTCATCTCCAG cg241 GGGACTATTCCTAGTTTATGAGGTGGTTAAGGATATCGGTGGGGTGGGCTGG 455 25648 AGCGGTGT[CG]GGTTAGGTCTGAGAGAAGGCCTCGCACAAAACACTGTACAA ACCCGAAAGGAAGTCTGAG cg242 AAAATAAAATCCCGCCATCCTCCCCCCTCCCCGCCCCACCCCCGCCAGGTTTCAA 456 08206 CAGCA[CG]GACTCCAGTCCAGTGCAGTGCCGCCACACCAGAGACAACAGGTGT TTCGGGAAAAGACCC cg243 AGGCGCCATGTCAGCCCGGGAAGTGGCCGTGCTGCTGCTGTGGCTGAGCTGCT 457 04712 ATGGCTC[CG]CCCTTTGGAGGTAGAGAGACGCCAGTCGCAGGCGAGCGACTA GGCGGGGATTACCCCCGG cg243 CCCGCACACGTGGCCCTCCCGCCTCCGGGCCCCGCCCCCTTGGCCGCAACTGGC 458 32433 AACTCC[CG]CCTGAAGAATAGATTCTCTGGTTCACAGCCGTCTGCAGGCTCAG GAACAGATCTGGGCGG cg244 GTCGCGCAGCCCTGGCCCGAGGGTTCCCGGGGCACGGCCGCTGGGCCCCCGG 459 07308 TGGAGGAG[CG]TTTCCGCCAGCTGCACCTACGAAAGCAGGTGTCTTACAGGTA AGGAGGACGTGGGCAGAG cg244 CCACAAAGCGAGGAAGGGCAGGGGCTACGGAGTGGGGGCACCCCGAAAGCC 460 93940 TTGAGCCCC[CG]AGTTTGCTCGGTTGAGGGTGTTGGGGGCACAGGGATGCTG GCCCCCAGCTCCCCACTGGA cg245 AATGGAAACTGCTAATTTTTGAAGCAGAAGGTTGACAGCTTCAGTAAGATCTC 461 05122 AAGAGAG[CG]AGAAGACTGGAATCAGGTGAGGCCATAACTTCTTATCTAAACT TAGTTTCTGGGGTGGAA cg245 GTGGGGGCTGGGCAGCGTGTTTGTCCCACCTGTGTAAACTCTGATTCCAGCAA 462 05341 CTTATTC[CG]CATGCGCCCAGTCTAATTAAAATAAAAGTGAATCAAATTTTGAA TGGATTGGTGTTTCGA cg245 GTGTGAATTGATGACCAAGGCATGGCAGAGCCTCTCTCATCTTTATAATCAGTT 463 56026 CAGCGG[CG]GCCTCCACTACAGGGAACTCCCAGCCAGTCCCGAGGCCTAGGG ACATCCAGGGAGAAACG cg246 CAGGCGCTTCCCACCAGCTACAGTCGGAGATTTGGAGCGCTTGTGTCTGAGGC 464 51706 TCAATCC[CG]TCAGGTGCCGCGCAACTCAGCGGCGCATTCTCTTTGGACCCGA GGCACCACCATACTTTC cg246 GCCTGCTCCCCGTCCCACCCCTCCCTGAGCACGCCACCCCGCCCTCTCCCTCTCT 465 74703 GAGAG[CG]AGATACCCGGCCAGACACCCTCACCTGCGGTGCCCAGCTGCCCAG GCTGAGGCAAGAGAA cg249 CTCTGCGGTGGCCCGAGCCCCAGCGGCCTCAGGTGAGCGGGCAGCATCCCGA 466 21089 TTCCCTGG[CG]GCCTAGAATGGAATCGCAAGGTTTAGAGAAATTAAGGGACCT GGGACTTGCCACCCTGGG cg250 ATACACATTTTTGGCCCCAACCTGCATCGACCAAGTCAGAAATTCTGCAGTGTG 467 22327 TGTTTT[CG]TAAGTCCTCCAGGTGACTCTGATGTACTCTCAGGGTTCAGAACCA TTGAGAGAGAGCAGT cg250 TGACAGCCGGAGGTTCCAGCTGCGCGCCCACAGCCCCTCGGTAGCGCCGCCGA 468 92328 CTCGTGG[CG]TCTATAGGCTGTTTCTGCGTCACTCATGCATGGAAGACCAATCA GAGAGCGTACTTGTCT cg251 GTGCCCCCTCCTCTTTGCTGCTGCAGTGTCTGCGCCGGGCCATTTAATGAGATT 469 36687 TATTCA[CG]CACGGCTCTTCTCAGCTTTGCGAGGGGTTGGCAGATCCAGTGCAC AGGGATTTCCCACTA cg252 GCACAGCTGCCCTTTGAAGTACGGTCTATTATATCTCTTTTACAGACCCAGAAA 470 29964 CTGAGG[CG]CAGAAGTTAGGGTCAGCCCCAGGTCACACAGCTAACAAGAGCT GGCCTAGGCACCCAGGG cg252 GGGGCGTGGGTGGGTCAGCGTTCCTTGGGGACCCGTGAAGCCTGGGCTTAGG 471 51635 GCTCACAG[CG]TGGGTCCCCAGCACAGACAGGAGGCGGACAGCTTCCCGTGA ACTGCAGGGGAGTCCCGGG cg252 CAAACTAGTGACTGTTTTACTGCAGGTGAAGAAGGGGCAGAGATCAGAGGCT 472 56723 CTAGCAGG[CG]GGACAATGCCCAGGGATTCATGAGCCGGACAAAGCTGTATC CCTCCATTTCCACCTGCCA cg254 GGAGCCCCTGGGATGACCCATCCCAAGGTCCCAGCCTAAGTCTGAGGTTCCAG 473 28451 GGCTGGT[CG]CAGGCCGTCCTTGCAGCCCTCGCCAGAGCGTTGTCTGCACCTC CGACACTAGGTGGCGCC cg254 GAGGGATGGTTGTCCTCACCCCTGTGAGGCAATATGCTGTCCATTAGTATCCAC 474 59323 TGAATG[CG]TGAAATTTTTTTCTAATGGGCAAACTGAGGCTCAGAGAAGTTCCT GTCTGGCTCAAGGTT cg255 TCCCGGGCGCGGAGGATGGAAACCTGGCGGTAACCTCTGCAGGTCGTGCCAC 475 36676 TCGGTGTG[CG]CAAGGTCTCCAGAGGCATCTTTTCATTTTTAGGGGGCACTTTC CACGAATTCATTTGAGC cg257 GCGCTTCCAGAAGGCTGCAAATGGGAATTCCAGACAAACCCACTTGGGTGAAT 476 13185 CCCAGCA[CG]CGGGCTGCGGCGTAGGGGGAGAGCTCCTCACGCGGCTCAGAG TGTAGCCCAGGCCCGCAG cg257 GGGAAAGTCTCAAAACTGTCAACTCTGATAGAAAGCTCATGTCAGAGACCTGA 477 69980 AGCTCAG[CG]ATGTAGTTCTGAGACATATCTAAGACTTTGGTTTTCAGCGGTAG GTCTTTTGGAACATGA cg258 TCTACCTAGTAACAGCTGAGAAATAAGGCTCGAGACACCATTGGTTGGTTCAG 478 81193 CCTCACT[CG]GCCAATCCTGGGCTCTAAACTGCTCAGTGGAAATCTTGGGACTT TTTGGACACCCAGAGA cg258 CAGCCCACGTGACTACAGGGGCACTTGATGGGAATCATGGCAGCATCCAGGCC 479 98500 ATTGTCC[CG]CTTCTGGGAGTGGGGAAAGAACATCGTCTGCGTGGGGAGGAA CTACGCGGACCACGTCAG cg260 AGGAGGATCTCTGTAAATTGTTTTCTTAGGGAGAAGGATAGGGTGAAGGAGT 480 22315 AGAATCGA[CG]ACTGTAGATTTGTGAGTAGAATCCCATTTGTAGTTAAACTTGG GTAAATGGGAGAAAGGG cg260 GCCTCTCTGTGGTTCTGCCTGGAAGACGGAAGGCAGGTGGTTGGCTCTAGTCA 481 91688 TCCACGA[CG]GGCTGGCACCTCTCCAGCTGCGGCCAGTCTAACCCCAGGGCCT GCTGGGAAATGTAGTTC cg260 GCGCCCCTGGCGTCCGGGCAGGTGCCAGGTGAGGAAAGAAATGGGGGCCGCT 482 96837 CCATGAAG[CG]GTTCCTGCCAATAAAGAAAACGACATCCAGAGAATACCCAGG CGGGGAATAAAGGGGTCC cg261 CAGCACGGGCGGGGGGCAGGGGCTGGGGCCGACCGGGAGGCCGGTGCCAA 483 04204 GGATGGGGGC[CG]CCCGGCTGCCCCGCGCGTGAGGAGGCCGAGGGGCGCGC CACCCCGGCCCGGGGCGGCCGC cg261 TAATCTCTTCTTTGGACGTTTGGCAGCTCCATTTCACCTCCCCTTAACTCTGTTTG 484 09803 GGAT[CG]CTTACACACCAAGGAAGTTGGGCTTTGAGAATTCCATCCCACTGGC ACTGAGGAGAATAT cg262 CAGCCTTTCCCCGGGCCTGGGGTTCCTGGACTAGGCTGCGCTGCAGTGACTGT 485 01213 GGACTGG[CG]TGTGGCGGGGGTCGTGGCAGCCCCTGCCTTACCTCTAGGTGCC AGCCCCAGGCCCGGGCC cg262 GGCTTTCCCGAATGGCGCGCCCAGGACGGCTCTTGCGGCTGGCTGTCCAAACT 486 12924 GGGCCCG[CG]TCCTGAAGTGACCCCAGCCTGATCTCGGCCAGCTGCTTGTGAC CTTGGCCTGTCCCAGCA cg262 CCTGGCCGGCCGGCTCGCTAGGCGCGGGGTCTAGGCCAGGCTGGGGCTGCTT 487 19051 GGAGGCTG[CG]CCCTCCCCTGCCCGCGGCGCCCCGGCCCCCGCCGTCGAGAGT GGACGCCCCTCTGGGGTA cg263 CTCTAAAAAGTGACATTGATGCCAACTGCCAGAGCTGGTACCCATGCCATCTGC 488 12920 TAGTGA[CG]TCACAGGGCAGAGAGAGCCATGTGATCCTCTCTCTTGGGACCTT CATTCTGCACTGATCA cg263 GTTTGCACTGAAAGTTGTGTTGGCTCAGGAGCTGCTTTTCCGGGGATCTGCAGT 489 50286 TGCCCC[CG]CCACCTCCTGGCTGCGGTTGGCAGGTCCCTCCCTCAGCAGTTCGT CCTCCGCCTGCGCCG cg263 CAAGGAGGGAGCAGGAGCATTCGAACGCGGAAATCGAGGTGCTAGTCCAAAC 490 57744 TGCTCGGT[CG]GCTTTAGTCATAGCTGGATAATGCCCGGCTCAGGTCTACCACA AGCCATACAGCTGCTTT cg263 TTGTTACGGGCGCGGTGGTGCAGGGGCAAATCGGGACTGGGATTTGGTCCTT 491 82071 ACCCTTAA[CG]TGGCTCTAAGACCAGAAGGGAACACCTGACTTGTGTTGACCT CTTCAGTTAGCTGCAGGT cg263 TGAAAACACAGCAAGGGCCCCACTAGCTGAAACCAAGTTGCAGAGTTTTGAGG 492 94737 GTCCCAC[CG]CCGACCGCCGGCCCGCCGCGAGCCCTGCCCCCTGCGCGGCCAC GCCCCCTTGCTCCCCGC cg263 TAAATAAATAAGGGCTTTTGTTTGTTTGCCGGCTCCTGCACATGGCTGCTGGGA 493 94940 CTCAAG[CG]CTCGTGTTGTCTGCGCCTCTGTGGGACTCTGGGGACGGGAGGCA GGGGAGGCCCCCGCAG cg265 GAGGCTCTGAGGCTGCAACAGTCTCCCTCCTATTGAAGCTAGAACAGCACCCC 494 81729 GAGCCTG[CG]CCATAAGTGCCCCCAGAACTTCAGCGCCCACCATGGCGCACAA GGCCGGTGCCCAGCGCC cg266 CTTGGGCAACGTAGGAGACCTCCGTCTCCACAAGTAAAATTAATTAGCCGGCT 495 14073 GTGGTGG[CG]CGCACCTGTGGTCCCAGCTACTCAGGAGGCTGAGGTAGGAGG ATCACCTGAGCCCGGGAG cg266 GAGGCTGAGGCAGGAGAATGGCGTGAACCCGGGAGAATGGTGTGCCCCGAG 496 65419 CCTACTTCC[CG]CGCAGTCCTCCAAGACGCGGCCTCCAGCAGGGGTCGCTGCTT CGCTGCCGCCCTGGCCTC cg267 GCCAGGACCAAATGCCCCCGGAAGCGGGGAGCGACAGCAGCGGAGAGGAAC 497 11820 ATGTCCTGG[CG]CCCCCGGGCCTGCAGCCTCCACACTGCCCCGGCCAGTGTCT GATCTGGGCTTGCAAGACC cg267 GCTTGGACACTTGCAGCATGTTGCCTCTGCCAACTGCCTAGAATTTAAGCCTGA 498 46469 CTTTGC[CG]CCTTACTGACCCCAGCAACTTAACCTGTCTGTGCCTTAATTTTCTT ATCTACAGAATGGA cg268 AAAGTTAAGTACTAAGTATGTGGTGAACAAATAAATCCACCCTTCTGAAACACA 499 15229 TCTAAA[CG]AGGTCCTGTATTTGAAAGTGTCTGGAAGATTAAAAGGCACTACA CCAAAGCTGCTAGCAC cg268 GGACTGGTACAGGACAGGCATCTTTGAACCTATTTCTGGGAGTTCTGAAACTAC 500 24091 TGTTCT[CG]TGGGCCTTGGCGACTGATTTGGGAAAGCTGACCCTGGGTTGGCC TGGCTTCCAGCCACCG cg268 CGACGACGACCTCAACAGCGTGCTGGACTTCATCCTGTCCATGGGGCTGGATG 501 42024 GCCTGGG[CG]CCGAGGCCGCCCCGGAGCCGCCGCCGCCGCCCCCGCCGCCTG CGTTCTATTACCCCGAAC cg268 ACAAAGTGATCTGGCACAGCTGCAGGGTGGCATTGAGTCTGAGGCTTATGGTG 502 66325 CAGAAGC[CG]AAGTTAAAGATGTTTCTAGAGCCTGAAGACTTCCTCTTGAGGG TGAGTTGCTGCCTACAA cg268 CGCGGGTGGAAGGTGAAGGTCGAGGGAGGTCAGGCTGCTTCTGCGTGTCCTG 503 98166 ACGGCTGG[CG]TGTTCTCTTGAGATGGGCTCGGGCTACTTGGCCAGCTTCAAT TTAAGCCACAGTGTCTCC cg269 CCCAGCCCACGGCGGCCCGCGAGGGACAAAACGCGCCGCGCCTGGTTCCCCG 504 32976 CCCACGGA[CG]CGGTGACTTTCCAGAACGTCTTAAAGGCAACGCACTCTGACT CAAGGCCCAGGGAGGCTG cg270 TGTTTTTGTGGGAGGCCTTCTGCATGGTCCCGGGAGGTCAGGCAGCCCGGGAG 505 15931 GGCCTCC[CG]GAGCAGAGGCTGGAGTCAGTCCCAATGCCAACAGTTTCGAACC TTGCCCGCGGGCACTGC cg271 CCTGTCTTCAGCAGCATCGCTCTGGACTCAGCTTCCGAGGACCTGACCAGATCT 506 87881 GGTCTG[CG]TGTATCAGCTGTATGTGTTGGGCTCTGGAAGCTAAGAAACGTCT GAAAAGCACTGGGGTC cg272 TGCCCCGGTAACTGCCTCCCCAACACCTGCCTGCCTTCCACTGCGAAACCTGCTC 507 44482 TCGGA[CG]CCCTGACCATACCGCACACAATACTGCAAGCCTGTGTGGGCCTGG GGGTGGGATGGACCC cg273 GATGGCCCTTTAAGAGGCACTGTCCAGCTCTGGTTGCCATGGAGACAGCTGGA 508 67952 CACAGAC[CG]GGTAGAGGCAGGCCCACAGCATGTCCTCCAAGGTTTACTCCAC AGGTGGGAAGAGGACTG cg274 CTGGGATTACAGGCGTGAGCCACTGCGCCTGGCCTTTGCAAGGTTTTGAGGAA 509 40834 AGTGAAG[CG]TTCTGTTGAAGCAGGGCTTGAGTTCTGTTGTAAGTGTTTCATG AAGCCCTGGAGACCTCT cg274 TCAGGTTCTGGAACCAAGACAAGTCCAGGGACAACCCCAAAGCTGGCCTGGGC 510 93997 TCCCGCG[CG]GACAGCTTTTATACCCTGTACGGAACCGCCCCTGCCCAGGATTG AAGTGGCCCCGCCTCC cg275 AGGTGGAAATACTTTCGGGCGATGGTGGGGGCCTGGTGCTTCTTGGACTCGG 511 14224 AAGATGAC[CG]CTTGGCATTCTGGTACAGCACCACCAGGCAGGCCAAGGTGG CCAGCAGAGACCAATAGGC cg276 GAACCAGGGCCCTTGGCGAGAGTTGGGGTGGGAATCGCGTAAGAAAAGCAAT 512 26102 TTCTAGAG[CG]GAAAGGTGACCCCACATTACAAAAAGAAATGGAGTAGAAAA ATAGGCTTGACTATTCTAA cg276 CTATCAGCCTAACGATTAAGTCAACATGCTAAGCAGCCACACGGGGGCTACTA 513 55905 AGTGACT[CG]CACGGGGGAAGCAGGCAGGGAGACAGATGGGCAGGGGAGG GAATCTGGGGCAATGCACAA Note: This application references a number of different publications as indicated throughout the specification by reference numbers. A list of these different publications ordered according to these reference numbers can be found above.

All publications mentioned herein are incorporated herein by reference to disclose and describe the methods and/or materials in connection with which the publications are cited (e.g. U.S. Patent Publication 20150259742). Publications cited herein are cited for their disclosure prior to the filing date of the present application. Nothing here is to be construed as an admission that the inventors are not entitled to antedate the publications by virtue of an earlier priority date or prior date of invention. Further, the actual publication dates may be different from those shown and require independent verification.

CONCLUSION

This concludes the description of the preferred embodiment of the present invention. The foregoing description of one or more embodiments of the invention has been presented for the purposes of illustration and description. It is not intended to be exhaustive or to limit the invention to the precise form disclosed. Many modifications and variations are possible in light of the above teaching. 

1. A method of obtaining information on a phenotypic age of an individual, the method comprising observing methylation of genomic DNA obtained from the individual, wherein: methylation is observed in at least 10 CpG methylation markers in polynucleotides having SEQ ID NO: 1-SEQ ID NO: 513; said observing comprises performing a bisulfite conversion process on the genomic DNA so that cytosine residues in the genomic DNA are transformed to uracil, while 5-methylcytosine residues in the genomic DNA are not transformed to uracil; and/or said observing comprises hybridizing genomic DNA from the individual to a methylation array comprising the polynucleotides having sequences of SEQ ID NO: 1-SEQ ID NO: 513 coupled to a matrix; such that information on the phenotypic age of the individual is obtained.
 2. The method of claim 1, wherein the method comprises observing a clinical variable in the individual comprising at least one of: concentrations of albumin in the individual, concentrations of creatine in the individual, concentrations of glucose in the individual, concentrations of c-reactive protein in the individual, concentrations of alkaline phosphatase in the individual lymphocyte percentage in the individual, mean cell volume in the individual, red blood cell distribution width in the individual, white blood cell count in the individual, and age of the individual at the time of assessment.
 3. The method of claim 1, wherein methylation is observed in genomic DNA obtained from leukocytes or epithelial cells obtained from the individual.
 4. The method of claim 1, further comprising comparing the chronological age of the individual at the time of assessment and the phenotypic age so as to obtain information on life expectancy of the individual.
 5. The method of claim 4, further comprising using information on the phenotypic age obtained by the method to predict an age at which the individual may suffer from one or more age related diseases or conditions.
 6. The method of claim 1, wherein the phenotypic age of the individual is estimated using a weighted average of methylation markers within the set of 513 methylation markers.
 7. The method of claim 6, further comprising assessing a plurality of methylation markers in a regression analysis.
 8. The method of claim 1, wherein methylation is observed by a process comprising hybridizing genomic DNA obtained from the individual with at least 100, 200, 300, 400 or 500 polynucleotides comprising SEQ ID NO: 1-SEQ ID NO: 513 disposed in an array.
 9. The method of claim 1, further comprising: comparing the CG locus methylation observed in the individual to the CG locus methylation of genomic DNA having SEQ ID NO: 1-SEQ ID NO: 513 present in white blood cells or epithelial cells derived from a group of individuals of known ages; and correlating the CG locus methylation observed in the individual with the CG locus methylation and known ages in the group of individuals.
 10. A method of observing a phenotypic age of an individual, the method comprising observing methylation of genomic DNA obtained from the individual, wherein: methylation is observed in 513 CpG methylation markers in polynucleotides having SEQ ID NO: 1-SEQ ID NO: 513; and said observing comprises hybridizing genomic DNA from the individual to a methylation array comprising the polynucleotides of SEQ ID NO: 1-SEQ ID NO: 513 coupled to a matrix; such that the phenotypic age of the individual is observed.
 11. The method of claim 10, wherein the method comprises observing a clinical variable in the individual comprising at least one of: concentrations of albumin in the individual, concentrations of creatine in the individual, concentrations of glucose in the individual, concentrations of c-reactive protein in the individual, concentrations of alkaline phosphatase in the individual lymphocyte percentage in the individual, mean cell volume in the individual, red blood cell distribution width in the individual, white blood cell count in the individual, and age of the individual at the time of assessment.
 12. The method of claim 11, wherein at least 3, 4, 5, 6, 7 or 8 clinical variables are observed.
 13. The method of claim 11, further comprising observing at least one factor selected from individual diet history, individual smoking history and individual exercise history.
 14. The method of claim 10, further comprising using the observed phenotypic age to assess a risk of a cancer mortality in the individual.
 15. The method of claim 14, wherein the cancer is a breast cancer.
 16. The method of claim 14, wherein the cancer is a lung cancer.
 17. The method of claim 10, further comprising using the observed phenotypic age to assess a risk of diabetes mortality in the individual.
 18. The method of claim 10, further comprising using the observed phenotypic age to assess a risk of dementia in the individual.
 19. The method of claim 11, wherein methylation is observed by a process comprising treatment of genomic DNA from the population of cells from the individual with bisulfite to transform unmethylated cytosines of CpG dinucleotides in the genomic DNA to uracil.
 20. A tangible computer-readable medium comprising computer-readable code that, when executed by a computer, causes the computer to perform operations comprising: a) receiving information corresponding to methylation levels of a set of methylation markers in a biological sample, wherein the set of methylation markers comprises 513 methylation markers having SEQ ID NO: 1-SEQ ID NO: 513; b) applying a statistical prediction algorithm to methylation data obtained from the set of methylation markers; and c) determining a phenotypic age using a weighted average of the methylation levels of the 513 methylation markers. 